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Union and Intersection
                   Complement of an Event
                                      Odds
        Applications to Empirical Probability




          Math 1300 Finite Mathematics
Section 8-2: Union, Intersection, and Complement of Events;
                            Odds


                                   Jason Aubrey

                             Department of Mathematics
                               University of Missouri




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                              Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




In this section, we will develop the rules of probability for
compound events (more than one simple event) and will
discuss probabilities involving the union of events as well as
intersection of two events.




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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


If A and B are two events in a sample space S, then the union
of A and B, denoted by A ∪ B, and the intersection of A and B,
denoted by A ∩ B, are defined as follows:
Definition (Union: A ∪ B)
                    A ∪ B = {e ∈ S|e ∈ A or e ∈ B}




                                     A                 B




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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


If A and B are two events in a sample space S, then the union
of A and B, denoted by A ∪ B, and the intersection of A and B,
denoted by A ∩ B, are defined as follows:
Definition (Union: A ∪ B)
                    A ∪ B = {e ∈ S|e ∈ A or e ∈ B}




                                     A                 B




                                                                                 ../images/stackedlogo-bw-
    The event “A or B” is defined as the set A ∪ B.
                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability



Definition (Intersection: A ∩ B)


                  A ∩ B = {e ∈ S|e ∈ A and e ∈ B}




                                     A                 B




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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability



Definition (Intersection: A ∩ B)


                  A ∩ B = {e ∈ S|e ∈ A and e ∈ B}




                                     A                 B




    The event “A and B” is defined as the set A ∩ B.                              ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability



Example: Consider the sample space of equally likely events
for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6}




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability



Example: Consider the sample space of equally likely events
for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6}
(a) What is the probability of rolling an odd number and a prime
number?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability



Example: Consider the sample space of equally likely events
for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6}
(a) What is the probability of rolling an odd number and a prime
number?
Let A be the event “an odd number is rolled”. Let B be the event
“a prime number is rolled”.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability



Example: Consider the sample space of equally likely events
for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6}
(a) What is the probability of rolling an odd number and a prime
number?
Let A be the event “an odd number is rolled”. Let B be the event
“a prime number is rolled”.
Since only the outcomes 3 and 5 are both odd and prime,
A ∩ B = {3, 5}.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability



Example: Consider the sample space of equally likely events
for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6}
(a) What is the probability of rolling an odd number and a prime
number?
Let A be the event “an odd number is rolled”. Let B be the event
“a prime number is rolled”.
Since only the outcomes 3 and 5 are both odd and prime,
A ∩ B = {3, 5}.
By the equally likely assumption,

                                            n(A ∩ B)  2  1
                     P(A ∩ B) =                      = =
                                              n(S)    6  3
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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




(b) What is the probability of rolling an odd number or a prime
number?




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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




(b) What is the probability of rolling an odd number or a prime
number?
Again, A = {1, 3, 5} and B = {2, 3, 5} so




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




(b) What is the probability of rolling an odd number or a prime
number?
Again, A = {1, 3, 5} and B = {2, 3, 5} so

                                A ∪ B = {1, 2, 3, 5}




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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




(b) What is the probability of rolling an odd number or a prime
number?
Again, A = {1, 3, 5} and B = {2, 3, 5} so

                                A ∪ B = {1, 2, 3, 5}

By the equally likely assumption

                                            n(A ∪ B)  4  2
                     P(A ∪ B) =                      = =
                                              n(S)    6  3



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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability




Suppose that an event E is

                                      E = A ∪ B.




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                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability




Suppose that an event E is

                                      E = A ∪ B.


    Is P(E) = P(A) + P(B)?




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                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability




Suppose that an event E is

                                      E = A ∪ B.


    Is P(E) = P(A) + P(B)?
    Only if A and B are mutually exclusive (disjoint), that is,
    if A ∩ B = ∅.




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                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Suppose that an event E is

                                       E = A ∪ B.


    Is P(E) = P(A) + P(B)?
    Only if A and B are mutually exclusive (disjoint), that is,
    if A ∩ B = ∅.
    In this case, P(A ∪ B) is the sum of the probabilities of all
    of the simple events in A plus the sum of the probabilities
    of all of the simple events in B.

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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability




But what happens if A and B are not mutually exclusive;
that is, what if A ∩ B = ∅?




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                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                 Complement of an Event
                                    Odds
      Applications to Empirical Probability




But what happens if A and B are not mutually exclusive;
that is, what if A ∩ B = ∅?
In this case, we must use a version of the addition principle
for probability.




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                            Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Definition (Probability of a Union of Two Events)
For any events A and B,

               P(A ∪ B) = P(A) + P(B) − P(A ∩ B)

If A and B are mutually exclusive, then

                          P(A ∪ B) = P(A) + P(B)




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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example Let E and F be events in a sample space S. If
P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is
P(E ∩ F )?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example Let E and F be events in a sample space S. If
P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is
P(E ∩ F )?
Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the
events E and F are not mutually exclusive; that is,
P(E ∩ F ) = 0.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example Let E and F be events in a sample space S. If
P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is
P(E ∩ F )?
Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the
events E and F are not mutually exclusive; that is,
P(E ∩ F ) = 0.
To find P(E ∩ F ) we use the addition principle:

              P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F )




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example Let E and F be events in a sample space S. If
P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is
P(E ∩ F )?
Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the
events E and F are not mutually exclusive; that is,
P(E ∩ F ) = 0.
To find P(E ∩ F ) we use the addition principle:

              P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F )
                       0.55 = 0.35 + 0.25 − P(E ∩ F )



                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example Let E and F be events in a sample space S. If
P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is
P(E ∩ F )?
Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the
events E and F are not mutually exclusive; that is,
P(E ∩ F ) = 0.
To find P(E ∩ F ) we use the addition principle:

              P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F )
                       0.55 = 0.35 + 0.25 − P(E ∩ F )
              P(E ∩ F ) = 0.35 + 0.25 − 0.55 = 0.05

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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: A single card is drawn from a deck of cards. Find the
probability that the card is a jack or club.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: A single card is drawn from a deck of cards. Find the
probability that the card is a jack or club.
Let E = “the set of jacks”, and F = “the set of clubs”. Are E
and F mutually exclusive?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: A single card is drawn from a deck of cards. Find the
probability that the card is a jack or club.
Let E = “the set of jacks”, and F = “the set of clubs”. Are E
and F mutually exclusive? No because a card can be both a
jack and a club?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: A single card is drawn from a deck of cards. Find the
probability that the card is a jack or club.
Let E = “the set of jacks”, and F = “the set of clubs”. Are E
and F mutually exclusive? No because a card can be both a
jack and a club?

    Now, n(E) = 4 - there are four jacks; by the equally likely
    assumption,
                                n(E)     4
                       P(E) =         =    .
                                n(S)    52




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: A single card is drawn from a deck of cards. Find the
probability that the card is a jack or club.
Let E = “the set of jacks”, and F = “the set of clubs”. Are E
and F mutually exclusive? No because a card can be both a
jack and a club?

    Now, n(E) = 4 - there are four jacks; by the equally likely
    assumption,
                                n(E)     4
                       P(E) =         =    .
                                n(S)    52
    Also, n(F ) = 13 - there are thirteen clubs; by the equally
    likely assumption,
                                                  n(F )   13
                                   P(F ) =              =    .
                                                  n(S)    52                      ../images/stackedlogo-bw-



                                Jason Aubrey       Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




    Finally, n(E ∩ F ) = 1 - there is one jack that is also a club;
    by the equally likely assumption,

                                                           1
                                       P(E ∩ F ) =           .
                                                          52
Now we can use the addition principle to get




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                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




    Finally, n(E ∩ F ) = 1 - there is one jack that is also a club;
    by the equally likely assumption,

                                                           1
                                       P(E ∩ F ) =           .
                                                          52
Now we can use the addition principle to get

               P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F )




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




    Finally, n(E ∩ F ) = 1 - there is one jack that is also a club;
    by the equally likely assumption,

                                                           1
                                       P(E ∩ F ) =           .
                                                          52
Now we can use the addition principle to get

               P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F )
                            4   13    1
               P(E ∪ F ) =    +    −
                           52 52 52



                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




    Finally, n(E ∩ F ) = 1 - there is one jack that is also a club;
    by the equally likely assumption,

                                                           1
                                       P(E ∩ F ) =           .
                                                          52
Now we can use the addition principle to get

               P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F )
                            4   13    1
               P(E ∪ F ) =    +    −
                           52 52 52
                           16    4
                         =    =
                           52   13
                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability




Example: Three coins are tossed. Assume they are fair coins.
(Tossing three coins is the same experiment as tossing one
coin three times.)




                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Three coins are tossed. Assume they are fair coins.
(Tossing three coins is the same experiment as tossing one
coin three times.)
(a) Use the multiplication principle to calculate the total number
of outcomes in the sample space.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Three coins are tossed. Assume they are fair coins.
(Tossing three coins is the same experiment as tossing one
coin three times.)
(a) Use the multiplication principle to calculate the total number
of outcomes in the sample space.

                              n(S) = (2)(2)(2) = 8




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: Three coins are tossed. Assume they are fair coins.
(Tossing three coins is the same experiment as tossing one
coin three times.)
(a) Use the multiplication principle to calculate the total number
of outcomes in the sample space.

                               n(S) = (2)(2)(2) = 8

(b) Find the probability of flipping at least two tails.




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: Three coins are tossed. Assume they are fair coins.
(Tossing three coins is the same experiment as tossing one
coin three times.)
(a) Use the multiplication principle to calculate the total number
of outcomes in the sample space.

                               n(S) = (2)(2)(2) = 8

(b) Find the probability of flipping at least two tails.
    Let E be the event of flipping at least two tails.



                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: Three coins are tossed. Assume they are fair coins.
(Tossing three coins is the same experiment as tossing one
coin three times.)
(a) Use the multiplication principle to calculate the total number
of outcomes in the sample space.

                               n(S) = (2)(2)(2) = 8

(b) Find the probability of flipping at least two tails.
    Let E be the event of flipping at least two tails.
    Let A be the event that exactly two tails are flipped.


                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: Three coins are tossed. Assume they are fair coins.
(Tossing three coins is the same experiment as tossing one
coin three times.)
(a) Use the multiplication principle to calculate the total number
of outcomes in the sample space.

                               n(S) = (2)(2)(2) = 8

(b) Find the probability of flipping at least two tails.
    Let E be the event of flipping at least two tails.
    Let A be the event that exactly two tails are flipped.
    Let B be the event that exactly three tails are flipped.
                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability



Notice that E = A ∪ B and that A and B are mutually
exclusive; that is,

                         E = A ∪ B and A ∩ B = ∅




                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability



Notice that E = A ∪ B and that A and B are mutually
exclusive; that is,

                         E = A ∪ B and A ∩ B = ∅

So P(E) = P(A ∪ B) = P(A) + P(B)




                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability



Notice that E = A ∪ B and that A and B are mutually
exclusive; that is,

                         E = A ∪ B and A ∩ B = ∅

So P(E) = P(A ∪ B) = P(A) + P(B)
       n({HTT , THT , TTH})   3
P(A) =                      =
              n(S)            8




                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability



Notice that E = A ∪ B and that A and B are mutually
exclusive; that is,

                         E = A ∪ B and A ∩ B = ∅

So P(E) = P(A ∪ B) = P(A) + P(B)
       n({HTT , THT , TTH})   3
P(A) =                      =
              n(S)            8
       n({TTT })   1
P(B) =           =
         n(S)      8




                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability



Notice that E = A ∪ B and that A and B are mutually
exclusive; that is,

                         E = A ∪ B and A ∩ B = ∅

So P(E) = P(A ∪ B) = P(A) + P(B)
        n({HTT , THT , TTH})   3
P(A) =                       =
                n(S)           8
        n({TTT })    1
P(B) =            =
           n(S)      8
Therefore,
                                                         3 1  1
                P(E) = P(A) + P(B) =                      + =
                                                         8 8  2
                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability




Suppose that we divide a finite sample space

                                 S = {e1 , . . . , en }

into two subsets E and E such that

                                      E ∩ E = ∅.




                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Suppose that we divide a finite sample space

                                  S = {e1 , . . . , en }

into two subsets E and E such that

                                       E ∩ E = ∅.

That is, E and E are mutually exclusive, and

                                       E ∪ E = S.



                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Suppose that we divide a finite sample space

                                  S = {e1 , . . . , en }

into two subsets E and E such that

                                       E ∩ E = ∅.

That is, E and E are mutually exclusive, and

                                       E ∪ E = S.

Then E is called the complement of E relative to S.

                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Suppose that we divide a finite sample space

                                  S = {e1 , . . . , en }

into two subsets E and E such that

                                       E ∩ E = ∅.

That is, E and E are mutually exclusive, and

                                       E ∪ E = S.

Then E is called the complement of E relative to S. The set
E contains all the elements of S that are not in E.
                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability




Furthermore,

                        P(S) = P(E ∪ E )
                                   = P(E) + P(E ) = 1




                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability




Furthermore,

                        P(S) = P(E ∪ E )
                                   = P(E) + P(E ) = 1

Therefore,

             P(E) = 1 − P(E )                    P(E ) = 1 − P(E)




                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Furthermore,

                         P(S) = P(E ∪ E )
                                    = P(E) + P(E ) = 1

Therefore,

             P(E) = 1 − P(E )                     P(E ) = 1 − P(E)

Many times it is easier to first compute the probability that and
event won’t occur, and then use that to find the probability that
the event will occur.

                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)
                                     P(A ∩ B) = 0




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)
                                     P(A ∩ B) = 0
(b) P(A ∩ B)




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)
                                     P(A ∩ B) = 0
(b) P(A ∩ B)
  P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                       Complement of an Event
                                          Odds
            Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)
                                       P(A ∩ B) = 0
(b) P(A ∩ B)
  P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9
(c) P(A )




                                                                                   ../images/stackedlogo-bw-



                                  Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                       Complement of an Event
                                          Odds
            Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)
                                       P(A ∩ B) = 0
(b) P(A ∩ B)
  P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9
(c) P(A )
                    P(A ) = 1 − P(A) = 1 − 0.6 = 0.4




                                                                                   ../images/stackedlogo-bw-



                                  Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                       Complement of an Event
                                          Odds
            Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)
                                       P(A ∩ B) = 0
(b) P(A ∩ B)
  P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9
(c) P(A )
                    P(A ) = 1 − P(A) = 1 − 0.6 = 0.4
(d) P(A ∩ B )



                                                                                   ../images/stackedlogo-bw-



                                  Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                       Complement of an Event
                                          Odds
            Applications to Empirical Probability


Example: If A and B are mutually exclusive events with
P(A) = 0.6 and P(B) = 0.3, find the following probabilities:

(a) P(A ∩ B)
                                       P(A ∩ B) = 0
(b) P(A ∩ B)
  P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9
(c) P(A )
                    P(A ) = 1 − P(A) = 1 − 0.6 = 0.4
(d) P(A ∩ B )
Since A ∩ B = ∅, A ⊆ B so A ∩ B = A and
                             P(A ∩ B ) = P(A) = 0.6
                                                                                   ../images/stackedlogo-bw-



                                  Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: What is the probability that when two dice are
tossed, the number of points on each die will not be the same?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: What is the probability that when two dice are
tossed, the number of points on each die will not be the same?
This is the same as saying that doubles will not occur. For
example,




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability


Example: What is the probability that when two dice are
tossed, the number of points on each die will not be the same?
This is the same as saying that doubles will not occur. For
example,




E be the set of all rolls of two dice which do not result in
doubles. Mathematically we can represent this as
               E = {(n, m)|1 ≤ n, m ≤ 6 and n = m}
We wish to find P(E).

                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability


Example: What is the probability that when two dice are
tossed, the number of points on each die will not be the same?
This is the same as saying that doubles will not occur. For
example,




E be the set of all rolls of two dice which do not result in
doubles. Mathematically we can represent this as
               E = {(n, m)|1 ≤ n, m ≤ 6 and n = m}
We wish to find P(E). Let S be be the sample space for this
experiment.
            S = {(n, m)|1 ≤ n, m ≤ 6} and n(S) = 36                               ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                   Complement of an Event
                                      Odds
        Applications to Empirical Probability




Here we have




                                                                               ../images/stackedlogo-bw-



                              Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                   Complement of an Event
                                      Odds
        Applications to Empirical Probability




Here we have

        E = {(n, m)|1 ≤ n, m ≤ 6 and n = m}




                                                                               ../images/stackedlogo-bw-



                              Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                   Complement of an Event
                                      Odds
        Applications to Empirical Probability




Here we have

        E = {(n, m)|1 ≤ n, m ≤ 6 and n = m}
            = {(1, 1), (2, 2), (3, 3), (4, 4), (5, 5), (6, 6)}




                                                                               ../images/stackedlogo-bw-



                              Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                   Complement of an Event
                                      Odds
        Applications to Empirical Probability




Here we have

        E = {(n, m)|1 ≤ n, m ≤ 6 and n = m}
            = {(1, 1), (2, 2), (3, 3), (4, 4), (5, 5), (6, 6)}

Since
                                         n(E )    6   1
                        P(E ) =                =    =
                                         n(S)    36   6




                                                                               ../images/stackedlogo-bw-



                              Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Here we have

          E = {(n, m)|1 ≤ n, m ≤ 6 and n = m}
              = {(1, 1), (2, 2), (3, 3), (4, 4), (5, 5), (6, 6)}

Since
                                           n(E )    6   1
                          P(E ) =                =    =
                                           n(S)    36   6
we have
                                                              1   5
                    P(E) = 1 − P(E ) = 1 −                      =
                                                              6   6


                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: A coin is tossed 5 times. What is the probability that
heads turn up at least once?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: A coin is tossed 5 times. What is the probability that
heads turn up at least once?
Let E represent the event “heads turns up at least once” and let
S represent the sample space. Notice first that

S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .}




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: A coin is tossed 5 times. What is the probability that
heads turn up at least once?
Let E represent the event “heads turns up at least once” and let
S represent the sample space. Notice first that

S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .}

We assume the coin is fair so that we may also assume that all
of the outcomes in the sample space are equally likely. What is
n(S)?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: A coin is tossed 5 times. What is the probability that
heads turn up at least once?
Let E represent the event “heads turns up at least once” and let
S represent the sample space. Notice first that

S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .}

We assume the coin is fair so that we may also assume that all
of the outcomes in the sample space are equally likely. What is
n(S)?
                 n(S) = (2)(2)(2)(2)(2) = 32


                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: A coin is tossed 5 times. What is the probability that
heads turn up at least once?
Let E represent the event “heads turns up at least once” and let
S represent the sample space. Notice first that

S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .}

We assume the coin is fair so that we may also assume that all
of the outcomes in the sample space are equally likely. What is
n(S)?
                 n(S) = (2)(2)(2)(2)(2) = 32
E contains all outcomes that have at least one H. E.g. HTTHT ,
HHHTT , etc.
                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




What is in the set E ?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




What is in the set E ? The opposite of “heads turn up at least
once” is “heads do not turn up at all.” So,

                                                                      1
                    E = {TTTTT } and P(E ) =
                                                                     32




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




What is in the set E ? The opposite of “heads turn up at least
once” is “heads do not turn up at all.” So,

                                                                      1
                    E = {TTTTT } and P(E ) =
                                                                     32
Therefore,
                                                             1   31
                  P(E) = 1 − P(E ) = 1 −                       =
                                                            32   32




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




What is in the set E ? The opposite of “heads turn up at least
once” is “heads do not turn up at all.” So,

                                                                      1
                    E = {TTTTT } and P(E ) =
                                                                     32
Therefore,
                                                             1   31
                  P(E) = 1 − P(E ) = 1 −                       =
                                                            32   32
Tip: Consider using complements whenever you encounter a
probability (or even counting problems) that contains the phrase
“at least once”.
                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: A shipment of 40 precision parts, including 8 that are
defective, is sent to an assembly plant. The quality control
division selects 10 at random for testing and rejects the
shipment if 1 or more in the sample are found defective. What
is the probability that the shipment will be rejected?




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: A shipment of 40 precision parts, including 8 that are
defective, is sent to an assembly plant. The quality control
division selects 10 at random for testing and rejects the
shipment if 1 or more in the sample are found defective. What
is the probability that the shipment will be rejected?

Notice first that the question
    What is the probability that the shipment will be
    rejected?

is really asking
    What is the probability that the 10 parts selected for
    testing contain at least one defective part?
                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Let S be all possible selections of 10 parts from the shipment of
40.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Let S be all possible selections of 10 parts from the shipment of
40.
               n(S) = C(40, 10) = 847, 660, 528




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Let S be all possible selections of 10 parts from the shipment of
40.
               n(S) = C(40, 10) = 847, 660, 528
Let E be the set of all selections of 10 parts that contain at least
one defective part. We want to find P(E).




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Let S be all possible selections of 10 parts from the shipment of
40.
               n(S) = C(40, 10) = 847, 660, 528
Let E be the set of all selections of 10 parts that contain at least
one defective part. We want to find P(E).
Notice that every set of 10 parts either




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Let S be all possible selections of 10 parts from the shipment of
40.
               n(S) = C(40, 10) = 847, 660, 528
Let E be the set of all selections of 10 parts that contain at least
one defective part. We want to find P(E).
Notice that every set of 10 parts either
    contains at least one defective part (so is in E), or




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Let S be all possible selections of 10 parts from the shipment of
40.
               n(S) = C(40, 10) = 847, 660, 528
Let E be the set of all selections of 10 parts that contain at least
one defective part. We want to find P(E).
Notice that every set of 10 parts either
    contains at least one defective part (so is in E), or
    contains no defective parts




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Let S be all possible selections of 10 parts from the shipment of
40.
               n(S) = C(40, 10) = 847, 660, 528
Let E be the set of all selections of 10 parts that contain at least
one defective part. We want to find P(E).
Notice that every set of 10 parts either
    contains at least one defective part (so is in E), or
    contains no defective parts
Thus E is the set of all selections of 10 parts that contain no
defective parts.

                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


The shipment of 40 parts contains 8 that are defective. To pick
10 that have no defective parts, we choose from the 32 that are
not defective, so




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


The shipment of 40 parts contains 8 that are defective. To pick
10 that have no defective parts, we choose from the 32 that are
not defective, so

                   n(E ) = C(32, 10) = 64, 512, 240




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


The shipment of 40 parts contains 8 that are defective. To pick
10 that have no defective parts, we choose from the 32 that are
not defective, so

                   n(E ) = C(32, 10) = 64, 512, 240

Therefore,

                                                       n(E )
             P(E) = 1 − P(E ) = 1 −
                                                       n(S)




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


The shipment of 40 parts contains 8 that are defective. To pick
10 that have no defective parts, we choose from the 32 that are
not defective, so

                   n(E ) = C(32, 10) = 64, 512, 240

Therefore,

                                                       n(E )
             P(E) = 1 − P(E ) = 1 −
                                                       n(S)
                                     64, 512, 240
                       =1−                        ≈ 1 − 0.0761
                                    847, 660, 528



                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


The shipment of 40 parts contains 8 that are defective. To pick
10 that have no defective parts, we choose from the 32 that are
not defective, so

                   n(E ) = C(32, 10) = 64, 512, 240

Therefore,

                                                       n(E )
             P(E) = 1 − P(E ) = 1 −
                                                       n(S)
                              64, 512, 240
                       =1−                 ≈ 1 − 0.0761
                             847, 660, 528
                       ≈ 0.9239


                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability


The shipment of 40 parts contains 8 that are defective. To pick
10 that have no defective parts, we choose from the 32 that are
not defective, so

                    n(E ) = C(32, 10) = 64, 512, 240

Therefore,

                                                        n(E )
             P(E) = 1 − P(E ) = 1 −
                                                        n(S)
                               64, 512, 240
                        =1−                 ≈ 1 − 0.0761
                              847, 660, 528
                        ≈ 0.9239

So there is about a 92.4% chance that the shipment will be
                                                      ../images/stackedlogo-bw-
rejected.
                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
           Complement of an Event
                              Odds
Applications to Empirical Probability




                                                                       ../images/stackedlogo-bw-



                      Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Definition (From Probabilities to Odds)
If P(E) is the probability of the event E, then
 1   the odds for E are given by

                            P(E)     P(E)
                                   =       , P(E) = 1.
                          1 − P(E)   P(E )




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Definition (From Probabilities to Odds)
If P(E) is the probability of the event E, then
 1   the odds for E are given by

                            P(E)     P(E)
                                   =       , P(E) = 1.
                          1 − P(E)   P(E )

 2   the odds against E are given by

                           1 − P(E)   P(E )
                                    =       , P(E) = 0
                             P(E)     P(E)


                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Definition (From Probabilities to Odds)
If P(E) is the probability of the event E, then
  1   the odds for E are given by

                             P(E)     P(E)
                                    =       , P(E) = 1.
                           1 − P(E)   P(E )

  2   the odds against E are given by

                            1 − P(E)   P(E )
                                     =       , P(E) = 0
                              P(E)     P(E)

Note: When possible, odds are to be expressed as ratios of
whole numbers.                                       ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Given the following probabilities for an event E, find
the odds for and against E:




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Given the following probabilities for an event E, find
the odds for and against E:
              3
    P(E) =    5




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Given the following probabilities for an event E, find
the odds for and against E:
    P(E) = 35
    Since P(E) = 3/5 we know P(E ) = 1 − P(E) = 2/5.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Given the following probabilities for an event E, find
the odds for and against E:
    P(E) = 35
    Since P(E) = 3/5 we know P(E ) = 1 − P(E) = 2/5.
    Then the odds for E are
                                     P(E)    3/5   3
                                           =     =
                                     P(E )   2/5   2




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Given the following probabilities for an event E, find
the odds for and against E:
    P(E) = 35
    Since P(E) = 3/5 we know P(E ) = 1 − P(E) = 2/5.
    Then the odds for E are
                                     P(E)    3/5   3
                                           =     =
                                     P(E )   2/5   2

    And the odds against E are

                                     P(E )   2/5   2
                                           =     =
                                     P(E)    3/5   3

                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability




P(E) = 0.35




                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability




P(E) = 0.35
Since P(E) = 0.35 we know P(E ) = 1 − 0.35 = 0.65




                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability




P(E) = 0.35
Since P(E) = 0.35 we know P(E ) = 1 − 0.35 = 0.65
Then the odds for E are
                               P(E)    0.35    7
                                     =      =
                               P(E )   0.65   13




                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                Complement of an Event
                                   Odds
     Applications to Empirical Probability




P(E) = 0.35
Since P(E) = 0.35 we know P(E ) = 1 − 0.35 = 0.65
Then the odds for E are
                               P(E)    0.35    7
                                     =      =
                               P(E )   0.65   13

And the odds against E are

                               P(E )   0.65   13
                                     =      =
                               P(E)    0.35    7


                                                                            ../images/stackedlogo-bw-



                           Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Find the odds in favor of rolling a total of seven when
two dice are tossed.




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Find the odds in favor of rolling a total of seven when
two dice are tossed.
Let E be the event that the sum of the two dice is seven. So,

          E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)}




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Find the odds in favor of rolling a total of seven when
two dice are tossed.
Let E be the event that the sum of the two dice is seven. So,

          E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)}


    n(E) = 6, n(S) = 36,




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Find the odds in favor of rolling a total of seven when
two dice are tossed.
Let E be the event that the sum of the two dice is seven. So,

          E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)}


    n(E) = 6, n(S) = 36,
            6              30
    P(E) =     and P(E ) =
           36              36



                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability




Example: Find the odds in favor of rolling a total of seven when
two dice are tossed.
Let E be the event that the sum of the two dice is seven. So,

          E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)}


    n(E) = 6, n(S) = 36,
            6              30
    P(E) =     and P(E ) =
           36              36
Therefore
                 P(E)     6/36    6   1
                       =       =    =
                 P(E )   30/36   30   5
                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                 Complement of an Event
                                    Odds
      Applications to Empirical Probability




                                               a
If the odds for an event E are                   , then the probability of E
                                               b
is,
                                                  a
                                     P(E) =
                                                 a+b




                                                                             ../images/stackedlogo-bw-



                            Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                  Complement of an Event
                                     Odds
       Applications to Empirical Probability




                                                a
If the odds for an event E are                    , then the probability of E
                                                b
is,
                                                   a
                                      P(E) =
                                                  a+b
                                                        a
If the odds against an event E are                        then the probability of
                                                        b
E is
                                                   b
                                      P(E) =
                                                  a+b



                                                                              ../images/stackedlogo-bw-



                             Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: If in repeated rolls of two fair dice the odds against
rolling a 6 before rolling a 7 are 6:5, what is the probability of
rolling a 6 before rolling a 7?




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: If in repeated rolls of two fair dice the odds against
rolling a 6 before rolling a 7 are 6:5, what is the probability of
rolling a 6 before rolling a 7?
Let E be the event “a 6 is rolled before a 7 is rolled”.




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: If in repeated rolls of two fair dice the odds against
rolling a 6 before rolling a 7 are 6:5, what is the probability of
rolling a 6 before rolling a 7?
Let E be the event “a 6 is rolled before a 7 is rolled”.
    odds against E are 6:5




                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                      Complement of an Event
                                         Odds
           Applications to Empirical Probability




Example: If in repeated rolls of two fair dice the odds against
rolling a 6 before rolling a 7 are 6:5, what is the probability of
rolling a 6 before rolling a 7?
Let E be the event “a 6 is rolled before a 7 is rolled”.
    odds against E are 6:5
    Therefore,
                                                    5     5
                                    P(E) =             =
                                                   6+5   11



                                                                                  ../images/stackedlogo-bw-



                                 Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                     Complement of an Event
                                        Odds
          Applications to Empirical Probability


Example: The data below was obtained from a random survey
of 1,000 residents of a state. The participants were asked their
political affiliations and their preferences in an upcoming
gubernatorial election (D = Democrat, R = Republican, U =
Unaffiliated. )

                                            D       R         U         Totals
          Candidate A                      200     100        85         385
          Candidate B                      250     230        50         530
          No Preference                    50      20        15           85
          Totals                           500     350       150        1,000




                                                                                 ../images/stackedlogo-bw-



                                Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                       Complement of an Event
                                          Odds
            Applications to Empirical Probability


Example: The data below was obtained from a random survey
of 1,000 residents of a state. The participants were asked their
political affiliations and their preferences in an upcoming
gubernatorial election (D = Democrat, R = Republican, U =
Unaffiliated. )

                                              D       R         U         Totals
            Candidate A                      200     100        85         385
            Candidate B                      250     230        50         530
            No Preference                    50      20        15           85
            Totals                           500     350       150        1,000

If a resident of the state is selected at random, what is the
empirical probability that the resident is not affiliated with a
political party or has no preference? What are the odds for this
                                                            ../images/stackedlogo-bw-
event?
                                  Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability


                                           D       R         U         Totals
         Candidate A                      200     100        85         385
         Candidate B                      250     230        50         530
         No Preference                    50      20        15           85
         Totals                           500     350       150        1,000
We are looking for P(U ∪ N):




                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability


                                           D       R         U         Totals
         Candidate A                      200     100        85         385
         Candidate B                      250     230        50         530
         No Preference                    50      20        15           85
         Totals                           500     350       150        1,000
We are looking for P(U ∪ N):
             P(U ∪ N) = P(U) + P(N) − P(U ∩ N)




                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability


                                           D       R         U         Totals
         Candidate A                      200     100        85         385
         Candidate B                      250     230        50         530
         No Preference                    50      20        15           85
         Totals                           500     350       150        1,000
We are looking for P(U ∪ N):
             P(U ∪ N) = P(U) + P(N) − P(U ∩ N)
                         150    85     15
                      =      +      −
                        1000 1000 1000




                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability


                                           D       R         U         Totals
         Candidate A                      200     100        85         385
         Candidate B                      250     230        50         530
         No Preference                    50      20        15           85
         Totals                           500     350       150        1,000
We are looking for P(U ∪ N):
             P(U ∪ N) = P(U) + P(N) − P(U ∩ N)
                         150    85      15
                      =      +       −
                        1000 1000 1000
                         220
                      =      = 0.22 or 22%
                        1000


                                                                                ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics
Union and Intersection
                    Complement of an Event
                                       Odds
         Applications to Empirical Probability


                                           D       R         U         Totals
         Candidate A                      200     100        85         385
         Candidate B                      250     230        50         530
         No Preference                    50      20        15           85
         Totals                           500     350       150        1,000
We are looking for P(U ∪ N):
           P(U ∪ N) = P(U) + P(N) − P(U ∩ N)
                          150     85      15
                       =       +       −
                         1000 1000 1000
                          220
                       =       = 0.22 or 22%
                         1000
Then the odds for this event are
                        22       22    11
                               =    =
                     100 − 22    78    39                                       ../images/stackedlogo-bw-



                               Jason Aubrey      Math 1300 Finite Mathematics

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Union, Intersection, Complement and Odds in Probability

  • 1. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Math 1300 Finite Mathematics Section 8-2: Union, Intersection, and Complement of Events; Odds Jason Aubrey Department of Mathematics University of Missouri ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 2. Union and Intersection Complement of an Event Odds Applications to Empirical Probability In this section, we will develop the rules of probability for compound events (more than one simple event) and will discuss probabilities involving the union of events as well as intersection of two events. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 3. Union and Intersection Complement of an Event Odds Applications to Empirical Probability If A and B are two events in a sample space S, then the union of A and B, denoted by A ∪ B, and the intersection of A and B, denoted by A ∩ B, are defined as follows: Definition (Union: A ∪ B) A ∪ B = {e ∈ S|e ∈ A or e ∈ B} A B ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 4. Union and Intersection Complement of an Event Odds Applications to Empirical Probability If A and B are two events in a sample space S, then the union of A and B, denoted by A ∪ B, and the intersection of A and B, denoted by A ∩ B, are defined as follows: Definition (Union: A ∪ B) A ∪ B = {e ∈ S|e ∈ A or e ∈ B} A B ../images/stackedlogo-bw- The event “A or B” is defined as the set A ∪ B. Jason Aubrey Math 1300 Finite Mathematics
  • 5. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Definition (Intersection: A ∩ B) A ∩ B = {e ∈ S|e ∈ A and e ∈ B} A B ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 6. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Definition (Intersection: A ∩ B) A ∩ B = {e ∈ S|e ∈ A and e ∈ B} A B The event “A and B” is defined as the set A ∩ B. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 7. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Consider the sample space of equally likely events for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6} ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 8. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Consider the sample space of equally likely events for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6} (a) What is the probability of rolling an odd number and a prime number? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 9. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Consider the sample space of equally likely events for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6} (a) What is the probability of rolling an odd number and a prime number? Let A be the event “an odd number is rolled”. Let B be the event “a prime number is rolled”. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 10. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Consider the sample space of equally likely events for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6} (a) What is the probability of rolling an odd number and a prime number? Let A be the event “an odd number is rolled”. Let B be the event “a prime number is rolled”. Since only the outcomes 3 and 5 are both odd and prime, A ∩ B = {3, 5}. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 11. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Consider the sample space of equally likely events for the rolling of a single fair die: S = {1, 2, 3, 4, 5, 6} (a) What is the probability of rolling an odd number and a prime number? Let A be the event “an odd number is rolled”. Let B be the event “a prime number is rolled”. Since only the outcomes 3 and 5 are both odd and prime, A ∩ B = {3, 5}. By the equally likely assumption, n(A ∩ B) 2 1 P(A ∩ B) = = = n(S) 6 3 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 12. Union and Intersection Complement of an Event Odds Applications to Empirical Probability (b) What is the probability of rolling an odd number or a prime number? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 13. Union and Intersection Complement of an Event Odds Applications to Empirical Probability (b) What is the probability of rolling an odd number or a prime number? Again, A = {1, 3, 5} and B = {2, 3, 5} so ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 14. Union and Intersection Complement of an Event Odds Applications to Empirical Probability (b) What is the probability of rolling an odd number or a prime number? Again, A = {1, 3, 5} and B = {2, 3, 5} so A ∪ B = {1, 2, 3, 5} ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 15. Union and Intersection Complement of an Event Odds Applications to Empirical Probability (b) What is the probability of rolling an odd number or a prime number? Again, A = {1, 3, 5} and B = {2, 3, 5} so A ∪ B = {1, 2, 3, 5} By the equally likely assumption n(A ∪ B) 4 2 P(A ∪ B) = = = n(S) 6 3 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 16. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that an event E is E = A ∪ B. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 17. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that an event E is E = A ∪ B. Is P(E) = P(A) + P(B)? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 18. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that an event E is E = A ∪ B. Is P(E) = P(A) + P(B)? Only if A and B are mutually exclusive (disjoint), that is, if A ∩ B = ∅. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 19. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that an event E is E = A ∪ B. Is P(E) = P(A) + P(B)? Only if A and B are mutually exclusive (disjoint), that is, if A ∩ B = ∅. In this case, P(A ∪ B) is the sum of the probabilities of all of the simple events in A plus the sum of the probabilities of all of the simple events in B. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 20. Union and Intersection Complement of an Event Odds Applications to Empirical Probability But what happens if A and B are not mutually exclusive; that is, what if A ∩ B = ∅? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 21. Union and Intersection Complement of an Event Odds Applications to Empirical Probability But what happens if A and B are not mutually exclusive; that is, what if A ∩ B = ∅? In this case, we must use a version of the addition principle for probability. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 22. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Definition (Probability of a Union of Two Events) For any events A and B, P(A ∪ B) = P(A) + P(B) − P(A ∩ B) If A and B are mutually exclusive, then P(A ∪ B) = P(A) + P(B) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 23. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example Let E and F be events in a sample space S. If P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is P(E ∩ F )? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 24. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example Let E and F be events in a sample space S. If P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is P(E ∩ F )? Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the events E and F are not mutually exclusive; that is, P(E ∩ F ) = 0. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 25. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example Let E and F be events in a sample space S. If P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is P(E ∩ F )? Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the events E and F are not mutually exclusive; that is, P(E ∩ F ) = 0. To find P(E ∩ F ) we use the addition principle: P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F ) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 26. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example Let E and F be events in a sample space S. If P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is P(E ∩ F )? Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the events E and F are not mutually exclusive; that is, P(E ∩ F ) = 0. To find P(E ∩ F ) we use the addition principle: P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F ) 0.55 = 0.35 + 0.25 − P(E ∩ F ) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 27. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example Let E and F be events in a sample space S. If P(E) = 0.35, P(F ) = 0.25 and P(E ∪ F ) = 0.55 then what is P(E ∩ F )? Notice here that P(E ∪ F ) = P(E) + P(F ), so we know that the events E and F are not mutually exclusive; that is, P(E ∩ F ) = 0. To find P(E ∩ F ) we use the addition principle: P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F ) 0.55 = 0.35 + 0.25 − P(E ∩ F ) P(E ∩ F ) = 0.35 + 0.25 − 0.55 = 0.05 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 28. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A single card is drawn from a deck of cards. Find the probability that the card is a jack or club. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 29. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A single card is drawn from a deck of cards. Find the probability that the card is a jack or club. Let E = “the set of jacks”, and F = “the set of clubs”. Are E and F mutually exclusive? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 30. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A single card is drawn from a deck of cards. Find the probability that the card is a jack or club. Let E = “the set of jacks”, and F = “the set of clubs”. Are E and F mutually exclusive? No because a card can be both a jack and a club? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 31. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A single card is drawn from a deck of cards. Find the probability that the card is a jack or club. Let E = “the set of jacks”, and F = “the set of clubs”. Are E and F mutually exclusive? No because a card can be both a jack and a club? Now, n(E) = 4 - there are four jacks; by the equally likely assumption, n(E) 4 P(E) = = . n(S) 52 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 32. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A single card is drawn from a deck of cards. Find the probability that the card is a jack or club. Let E = “the set of jacks”, and F = “the set of clubs”. Are E and F mutually exclusive? No because a card can be both a jack and a club? Now, n(E) = 4 - there are four jacks; by the equally likely assumption, n(E) 4 P(E) = = . n(S) 52 Also, n(F ) = 13 - there are thirteen clubs; by the equally likely assumption, n(F ) 13 P(F ) = = . n(S) 52 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 33. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Finally, n(E ∩ F ) = 1 - there is one jack that is also a club; by the equally likely assumption, 1 P(E ∩ F ) = . 52 Now we can use the addition principle to get ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 34. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Finally, n(E ∩ F ) = 1 - there is one jack that is also a club; by the equally likely assumption, 1 P(E ∩ F ) = . 52 Now we can use the addition principle to get P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F ) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 35. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Finally, n(E ∩ F ) = 1 - there is one jack that is also a club; by the equally likely assumption, 1 P(E ∩ F ) = . 52 Now we can use the addition principle to get P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F ) 4 13 1 P(E ∪ F ) = + − 52 52 52 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 36. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Finally, n(E ∩ F ) = 1 - there is one jack that is also a club; by the equally likely assumption, 1 P(E ∩ F ) = . 52 Now we can use the addition principle to get P(E ∪ F ) = P(E) + P(F ) − P(E ∩ F ) 4 13 1 P(E ∪ F ) = + − 52 52 52 16 4 = = 52 13 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 37. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Three coins are tossed. Assume they are fair coins. (Tossing three coins is the same experiment as tossing one coin three times.) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 38. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Three coins are tossed. Assume they are fair coins. (Tossing three coins is the same experiment as tossing one coin three times.) (a) Use the multiplication principle to calculate the total number of outcomes in the sample space. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 39. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Three coins are tossed. Assume they are fair coins. (Tossing three coins is the same experiment as tossing one coin three times.) (a) Use the multiplication principle to calculate the total number of outcomes in the sample space. n(S) = (2)(2)(2) = 8 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 40. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Three coins are tossed. Assume they are fair coins. (Tossing three coins is the same experiment as tossing one coin three times.) (a) Use the multiplication principle to calculate the total number of outcomes in the sample space. n(S) = (2)(2)(2) = 8 (b) Find the probability of flipping at least two tails. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 41. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Three coins are tossed. Assume they are fair coins. (Tossing three coins is the same experiment as tossing one coin three times.) (a) Use the multiplication principle to calculate the total number of outcomes in the sample space. n(S) = (2)(2)(2) = 8 (b) Find the probability of flipping at least two tails. Let E be the event of flipping at least two tails. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 42. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Three coins are tossed. Assume they are fair coins. (Tossing three coins is the same experiment as tossing one coin three times.) (a) Use the multiplication principle to calculate the total number of outcomes in the sample space. n(S) = (2)(2)(2) = 8 (b) Find the probability of flipping at least two tails. Let E be the event of flipping at least two tails. Let A be the event that exactly two tails are flipped. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 43. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Three coins are tossed. Assume they are fair coins. (Tossing three coins is the same experiment as tossing one coin three times.) (a) Use the multiplication principle to calculate the total number of outcomes in the sample space. n(S) = (2)(2)(2) = 8 (b) Find the probability of flipping at least two tails. Let E be the event of flipping at least two tails. Let A be the event that exactly two tails are flipped. Let B be the event that exactly three tails are flipped. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 44. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Notice that E = A ∪ B and that A and B are mutually exclusive; that is, E = A ∪ B and A ∩ B = ∅ ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 45. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Notice that E = A ∪ B and that A and B are mutually exclusive; that is, E = A ∪ B and A ∩ B = ∅ So P(E) = P(A ∪ B) = P(A) + P(B) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 46. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Notice that E = A ∪ B and that A and B are mutually exclusive; that is, E = A ∪ B and A ∩ B = ∅ So P(E) = P(A ∪ B) = P(A) + P(B) n({HTT , THT , TTH}) 3 P(A) = = n(S) 8 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 47. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Notice that E = A ∪ B and that A and B are mutually exclusive; that is, E = A ∪ B and A ∩ B = ∅ So P(E) = P(A ∪ B) = P(A) + P(B) n({HTT , THT , TTH}) 3 P(A) = = n(S) 8 n({TTT }) 1 P(B) = = n(S) 8 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 48. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Notice that E = A ∪ B and that A and B are mutually exclusive; that is, E = A ∪ B and A ∩ B = ∅ So P(E) = P(A ∪ B) = P(A) + P(B) n({HTT , THT , TTH}) 3 P(A) = = n(S) 8 n({TTT }) 1 P(B) = = n(S) 8 Therefore, 3 1 1 P(E) = P(A) + P(B) = + = 8 8 2 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 49. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that we divide a finite sample space S = {e1 , . . . , en } into two subsets E and E such that E ∩ E = ∅. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 50. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that we divide a finite sample space S = {e1 , . . . , en } into two subsets E and E such that E ∩ E = ∅. That is, E and E are mutually exclusive, and E ∪ E = S. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 51. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that we divide a finite sample space S = {e1 , . . . , en } into two subsets E and E such that E ∩ E = ∅. That is, E and E are mutually exclusive, and E ∪ E = S. Then E is called the complement of E relative to S. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 52. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Suppose that we divide a finite sample space S = {e1 , . . . , en } into two subsets E and E such that E ∩ E = ∅. That is, E and E are mutually exclusive, and E ∪ E = S. Then E is called the complement of E relative to S. The set E contains all the elements of S that are not in E. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 53. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Furthermore, P(S) = P(E ∪ E ) = P(E) + P(E ) = 1 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 54. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Furthermore, P(S) = P(E ∪ E ) = P(E) + P(E ) = 1 Therefore, P(E) = 1 − P(E ) P(E ) = 1 − P(E) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 55. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Furthermore, P(S) = P(E ∪ E ) = P(E) + P(E ) = 1 Therefore, P(E) = 1 − P(E ) P(E ) = 1 − P(E) Many times it is easier to first compute the probability that and event won’t occur, and then use that to find the probability that the event will occur. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 56. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 57. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 58. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) P(A ∩ B) = 0 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 59. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) P(A ∩ B) = 0 (b) P(A ∩ B) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 60. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) P(A ∩ B) = 0 (b) P(A ∩ B) P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 61. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) P(A ∩ B) = 0 (b) P(A ∩ B) P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9 (c) P(A ) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 62. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) P(A ∩ B) = 0 (b) P(A ∩ B) P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9 (c) P(A ) P(A ) = 1 − P(A) = 1 − 0.6 = 0.4 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 63. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) P(A ∩ B) = 0 (b) P(A ∩ B) P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9 (c) P(A ) P(A ) = 1 − P(A) = 1 − 0.6 = 0.4 (d) P(A ∩ B ) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 64. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If A and B are mutually exclusive events with P(A) = 0.6 and P(B) = 0.3, find the following probabilities: (a) P(A ∩ B) P(A ∩ B) = 0 (b) P(A ∩ B) P(A ∩ B) = P(A) + P(B) − P(A ∩ B) = 0.6 + 0.3 − 0 = 0.9 (c) P(A ) P(A ) = 1 − P(A) = 1 − 0.6 = 0.4 (d) P(A ∩ B ) Since A ∩ B = ∅, A ⊆ B so A ∩ B = A and P(A ∩ B ) = P(A) = 0.6 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 65. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: What is the probability that when two dice are tossed, the number of points on each die will not be the same? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 66. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: What is the probability that when two dice are tossed, the number of points on each die will not be the same? This is the same as saying that doubles will not occur. For example, ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 67. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: What is the probability that when two dice are tossed, the number of points on each die will not be the same? This is the same as saying that doubles will not occur. For example, E be the set of all rolls of two dice which do not result in doubles. Mathematically we can represent this as E = {(n, m)|1 ≤ n, m ≤ 6 and n = m} We wish to find P(E). ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 68. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: What is the probability that when two dice are tossed, the number of points on each die will not be the same? This is the same as saying that doubles will not occur. For example, E be the set of all rolls of two dice which do not result in doubles. Mathematically we can represent this as E = {(n, m)|1 ≤ n, m ≤ 6 and n = m} We wish to find P(E). Let S be be the sample space for this experiment. S = {(n, m)|1 ≤ n, m ≤ 6} and n(S) = 36 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 69. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Here we have ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 70. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Here we have E = {(n, m)|1 ≤ n, m ≤ 6 and n = m} ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 71. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Here we have E = {(n, m)|1 ≤ n, m ≤ 6 and n = m} = {(1, 1), (2, 2), (3, 3), (4, 4), (5, 5), (6, 6)} ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 72. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Here we have E = {(n, m)|1 ≤ n, m ≤ 6 and n = m} = {(1, 1), (2, 2), (3, 3), (4, 4), (5, 5), (6, 6)} Since n(E ) 6 1 P(E ) = = = n(S) 36 6 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 73. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Here we have E = {(n, m)|1 ≤ n, m ≤ 6 and n = m} = {(1, 1), (2, 2), (3, 3), (4, 4), (5, 5), (6, 6)} Since n(E ) 6 1 P(E ) = = = n(S) 36 6 we have 1 5 P(E) = 1 − P(E ) = 1 − = 6 6 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 74. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A coin is tossed 5 times. What is the probability that heads turn up at least once? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 75. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A coin is tossed 5 times. What is the probability that heads turn up at least once? Let E represent the event “heads turns up at least once” and let S represent the sample space. Notice first that S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .} ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 76. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A coin is tossed 5 times. What is the probability that heads turn up at least once? Let E represent the event “heads turns up at least once” and let S represent the sample space. Notice first that S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .} We assume the coin is fair so that we may also assume that all of the outcomes in the sample space are equally likely. What is n(S)? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 77. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A coin is tossed 5 times. What is the probability that heads turn up at least once? Let E represent the event “heads turns up at least once” and let S represent the sample space. Notice first that S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .} We assume the coin is fair so that we may also assume that all of the outcomes in the sample space are equally likely. What is n(S)? n(S) = (2)(2)(2)(2)(2) = 32 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 78. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A coin is tossed 5 times. What is the probability that heads turn up at least once? Let E represent the event “heads turns up at least once” and let S represent the sample space. Notice first that S = {HTTHT , HHHTT , THHHT , HTHTH, TTTTT , HHHHT , . . .} We assume the coin is fair so that we may also assume that all of the outcomes in the sample space are equally likely. What is n(S)? n(S) = (2)(2)(2)(2)(2) = 32 E contains all outcomes that have at least one H. E.g. HTTHT , HHHTT , etc. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 79. Union and Intersection Complement of an Event Odds Applications to Empirical Probability What is in the set E ? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 80. Union and Intersection Complement of an Event Odds Applications to Empirical Probability What is in the set E ? The opposite of “heads turn up at least once” is “heads do not turn up at all.” So, 1 E = {TTTTT } and P(E ) = 32 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 81. Union and Intersection Complement of an Event Odds Applications to Empirical Probability What is in the set E ? The opposite of “heads turn up at least once” is “heads do not turn up at all.” So, 1 E = {TTTTT } and P(E ) = 32 Therefore, 1 31 P(E) = 1 − P(E ) = 1 − = 32 32 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 82. Union and Intersection Complement of an Event Odds Applications to Empirical Probability What is in the set E ? The opposite of “heads turn up at least once” is “heads do not turn up at all.” So, 1 E = {TTTTT } and P(E ) = 32 Therefore, 1 31 P(E) = 1 − P(E ) = 1 − = 32 32 Tip: Consider using complements whenever you encounter a probability (or even counting problems) that contains the phrase “at least once”. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 83. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A shipment of 40 precision parts, including 8 that are defective, is sent to an assembly plant. The quality control division selects 10 at random for testing and rejects the shipment if 1 or more in the sample are found defective. What is the probability that the shipment will be rejected? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 84. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: A shipment of 40 precision parts, including 8 that are defective, is sent to an assembly plant. The quality control division selects 10 at random for testing and rejects the shipment if 1 or more in the sample are found defective. What is the probability that the shipment will be rejected? Notice first that the question What is the probability that the shipment will be rejected? is really asking What is the probability that the 10 parts selected for testing contain at least one defective part? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 85. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Let S be all possible selections of 10 parts from the shipment of 40. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 86. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Let S be all possible selections of 10 parts from the shipment of 40. n(S) = C(40, 10) = 847, 660, 528 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 87. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Let S be all possible selections of 10 parts from the shipment of 40. n(S) = C(40, 10) = 847, 660, 528 Let E be the set of all selections of 10 parts that contain at least one defective part. We want to find P(E). ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 88. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Let S be all possible selections of 10 parts from the shipment of 40. n(S) = C(40, 10) = 847, 660, 528 Let E be the set of all selections of 10 parts that contain at least one defective part. We want to find P(E). Notice that every set of 10 parts either ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 89. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Let S be all possible selections of 10 parts from the shipment of 40. n(S) = C(40, 10) = 847, 660, 528 Let E be the set of all selections of 10 parts that contain at least one defective part. We want to find P(E). Notice that every set of 10 parts either contains at least one defective part (so is in E), or ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 90. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Let S be all possible selections of 10 parts from the shipment of 40. n(S) = C(40, 10) = 847, 660, 528 Let E be the set of all selections of 10 parts that contain at least one defective part. We want to find P(E). Notice that every set of 10 parts either contains at least one defective part (so is in E), or contains no defective parts ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 91. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Let S be all possible selections of 10 parts from the shipment of 40. n(S) = C(40, 10) = 847, 660, 528 Let E be the set of all selections of 10 parts that contain at least one defective part. We want to find P(E). Notice that every set of 10 parts either contains at least one defective part (so is in E), or contains no defective parts Thus E is the set of all selections of 10 parts that contain no defective parts. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 92. Union and Intersection Complement of an Event Odds Applications to Empirical Probability The shipment of 40 parts contains 8 that are defective. To pick 10 that have no defective parts, we choose from the 32 that are not defective, so ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 93. Union and Intersection Complement of an Event Odds Applications to Empirical Probability The shipment of 40 parts contains 8 that are defective. To pick 10 that have no defective parts, we choose from the 32 that are not defective, so n(E ) = C(32, 10) = 64, 512, 240 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 94. Union and Intersection Complement of an Event Odds Applications to Empirical Probability The shipment of 40 parts contains 8 that are defective. To pick 10 that have no defective parts, we choose from the 32 that are not defective, so n(E ) = C(32, 10) = 64, 512, 240 Therefore, n(E ) P(E) = 1 − P(E ) = 1 − n(S) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 95. Union and Intersection Complement of an Event Odds Applications to Empirical Probability The shipment of 40 parts contains 8 that are defective. To pick 10 that have no defective parts, we choose from the 32 that are not defective, so n(E ) = C(32, 10) = 64, 512, 240 Therefore, n(E ) P(E) = 1 − P(E ) = 1 − n(S) 64, 512, 240 =1− ≈ 1 − 0.0761 847, 660, 528 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 96. Union and Intersection Complement of an Event Odds Applications to Empirical Probability The shipment of 40 parts contains 8 that are defective. To pick 10 that have no defective parts, we choose from the 32 that are not defective, so n(E ) = C(32, 10) = 64, 512, 240 Therefore, n(E ) P(E) = 1 − P(E ) = 1 − n(S) 64, 512, 240 =1− ≈ 1 − 0.0761 847, 660, 528 ≈ 0.9239 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 97. Union and Intersection Complement of an Event Odds Applications to Empirical Probability The shipment of 40 parts contains 8 that are defective. To pick 10 that have no defective parts, we choose from the 32 that are not defective, so n(E ) = C(32, 10) = 64, 512, 240 Therefore, n(E ) P(E) = 1 − P(E ) = 1 − n(S) 64, 512, 240 =1− ≈ 1 − 0.0761 847, 660, 528 ≈ 0.9239 So there is about a 92.4% chance that the shipment will be ../images/stackedlogo-bw- rejected. Jason Aubrey Math 1300 Finite Mathematics
  • 98. Union and Intersection Complement of an Event Odds Applications to Empirical Probability ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 99. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Definition (From Probabilities to Odds) If P(E) is the probability of the event E, then 1 the odds for E are given by P(E) P(E) = , P(E) = 1. 1 − P(E) P(E ) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 100. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Definition (From Probabilities to Odds) If P(E) is the probability of the event E, then 1 the odds for E are given by P(E) P(E) = , P(E) = 1. 1 − P(E) P(E ) 2 the odds against E are given by 1 − P(E) P(E ) = , P(E) = 0 P(E) P(E) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 101. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Definition (From Probabilities to Odds) If P(E) is the probability of the event E, then 1 the odds for E are given by P(E) P(E) = , P(E) = 1. 1 − P(E) P(E ) 2 the odds against E are given by 1 − P(E) P(E ) = , P(E) = 0 P(E) P(E) Note: When possible, odds are to be expressed as ratios of whole numbers. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 102. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Given the following probabilities for an event E, find the odds for and against E: ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 103. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Given the following probabilities for an event E, find the odds for and against E: 3 P(E) = 5 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 104. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Given the following probabilities for an event E, find the odds for and against E: P(E) = 35 Since P(E) = 3/5 we know P(E ) = 1 − P(E) = 2/5. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 105. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Given the following probabilities for an event E, find the odds for and against E: P(E) = 35 Since P(E) = 3/5 we know P(E ) = 1 − P(E) = 2/5. Then the odds for E are P(E) 3/5 3 = = P(E ) 2/5 2 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 106. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Given the following probabilities for an event E, find the odds for and against E: P(E) = 35 Since P(E) = 3/5 we know P(E ) = 1 − P(E) = 2/5. Then the odds for E are P(E) 3/5 3 = = P(E ) 2/5 2 And the odds against E are P(E ) 2/5 2 = = P(E) 3/5 3 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 107. Union and Intersection Complement of an Event Odds Applications to Empirical Probability P(E) = 0.35 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 108. Union and Intersection Complement of an Event Odds Applications to Empirical Probability P(E) = 0.35 Since P(E) = 0.35 we know P(E ) = 1 − 0.35 = 0.65 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 109. Union and Intersection Complement of an Event Odds Applications to Empirical Probability P(E) = 0.35 Since P(E) = 0.35 we know P(E ) = 1 − 0.35 = 0.65 Then the odds for E are P(E) 0.35 7 = = P(E ) 0.65 13 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 110. Union and Intersection Complement of an Event Odds Applications to Empirical Probability P(E) = 0.35 Since P(E) = 0.35 we know P(E ) = 1 − 0.35 = 0.65 Then the odds for E are P(E) 0.35 7 = = P(E ) 0.65 13 And the odds against E are P(E ) 0.65 13 = = P(E) 0.35 7 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 111. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Find the odds in favor of rolling a total of seven when two dice are tossed. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 112. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Find the odds in favor of rolling a total of seven when two dice are tossed. Let E be the event that the sum of the two dice is seven. So, E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)} ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 113. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Find the odds in favor of rolling a total of seven when two dice are tossed. Let E be the event that the sum of the two dice is seven. So, E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)} n(E) = 6, n(S) = 36, ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 114. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Find the odds in favor of rolling a total of seven when two dice are tossed. Let E be the event that the sum of the two dice is seven. So, E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)} n(E) = 6, n(S) = 36, 6 30 P(E) = and P(E ) = 36 36 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 115. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: Find the odds in favor of rolling a total of seven when two dice are tossed. Let E be the event that the sum of the two dice is seven. So, E = {(1, 6), (2, 5), (3, 4), (4, 3), (5, 2), (6, 1)} n(E) = 6, n(S) = 36, 6 30 P(E) = and P(E ) = 36 36 Therefore P(E) 6/36 6 1 = = = P(E ) 30/36 30 5 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 116. Union and Intersection Complement of an Event Odds Applications to Empirical Probability a If the odds for an event E are , then the probability of E b is, a P(E) = a+b ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 117. Union and Intersection Complement of an Event Odds Applications to Empirical Probability a If the odds for an event E are , then the probability of E b is, a P(E) = a+b a If the odds against an event E are then the probability of b E is b P(E) = a+b ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 118. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If in repeated rolls of two fair dice the odds against rolling a 6 before rolling a 7 are 6:5, what is the probability of rolling a 6 before rolling a 7? ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 119. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If in repeated rolls of two fair dice the odds against rolling a 6 before rolling a 7 are 6:5, what is the probability of rolling a 6 before rolling a 7? Let E be the event “a 6 is rolled before a 7 is rolled”. ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 120. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If in repeated rolls of two fair dice the odds against rolling a 6 before rolling a 7 are 6:5, what is the probability of rolling a 6 before rolling a 7? Let E be the event “a 6 is rolled before a 7 is rolled”. odds against E are 6:5 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 121. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: If in repeated rolls of two fair dice the odds against rolling a 6 before rolling a 7 are 6:5, what is the probability of rolling a 6 before rolling a 7? Let E be the event “a 6 is rolled before a 7 is rolled”. odds against E are 6:5 Therefore, 5 5 P(E) = = 6+5 11 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 122. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: The data below was obtained from a random survey of 1,000 residents of a state. The participants were asked their political affiliations and their preferences in an upcoming gubernatorial election (D = Democrat, R = Republican, U = Unaffiliated. ) D R U Totals Candidate A 200 100 85 385 Candidate B 250 230 50 530 No Preference 50 20 15 85 Totals 500 350 150 1,000 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 123. Union and Intersection Complement of an Event Odds Applications to Empirical Probability Example: The data below was obtained from a random survey of 1,000 residents of a state. The participants were asked their political affiliations and their preferences in an upcoming gubernatorial election (D = Democrat, R = Republican, U = Unaffiliated. ) D R U Totals Candidate A 200 100 85 385 Candidate B 250 230 50 530 No Preference 50 20 15 85 Totals 500 350 150 1,000 If a resident of the state is selected at random, what is the empirical probability that the resident is not affiliated with a political party or has no preference? What are the odds for this ../images/stackedlogo-bw- event? Jason Aubrey Math 1300 Finite Mathematics
  • 124. Union and Intersection Complement of an Event Odds Applications to Empirical Probability D R U Totals Candidate A 200 100 85 385 Candidate B 250 230 50 530 No Preference 50 20 15 85 Totals 500 350 150 1,000 We are looking for P(U ∪ N): ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 125. Union and Intersection Complement of an Event Odds Applications to Empirical Probability D R U Totals Candidate A 200 100 85 385 Candidate B 250 230 50 530 No Preference 50 20 15 85 Totals 500 350 150 1,000 We are looking for P(U ∪ N): P(U ∪ N) = P(U) + P(N) − P(U ∩ N) ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 126. Union and Intersection Complement of an Event Odds Applications to Empirical Probability D R U Totals Candidate A 200 100 85 385 Candidate B 250 230 50 530 No Preference 50 20 15 85 Totals 500 350 150 1,000 We are looking for P(U ∪ N): P(U ∪ N) = P(U) + P(N) − P(U ∩ N) 150 85 15 = + − 1000 1000 1000 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 127. Union and Intersection Complement of an Event Odds Applications to Empirical Probability D R U Totals Candidate A 200 100 85 385 Candidate B 250 230 50 530 No Preference 50 20 15 85 Totals 500 350 150 1,000 We are looking for P(U ∪ N): P(U ∪ N) = P(U) + P(N) − P(U ∩ N) 150 85 15 = + − 1000 1000 1000 220 = = 0.22 or 22% 1000 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics
  • 128. Union and Intersection Complement of an Event Odds Applications to Empirical Probability D R U Totals Candidate A 200 100 85 385 Candidate B 250 230 50 530 No Preference 50 20 15 85 Totals 500 350 150 1,000 We are looking for P(U ∪ N): P(U ∪ N) = P(U) + P(N) − P(U ∩ N) 150 85 15 = + − 1000 1000 1000 220 = = 0.22 or 22% 1000 Then the odds for this event are 22 22 11 = = 100 − 22 78 39 ../images/stackedlogo-bw- Jason Aubrey Math 1300 Finite Mathematics