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Name ____________________________________   Date ______________________
Mrs. Labuski & Mrs. Rooney Period ______    Lesson 11-3 Theoretical Probability

 VOCABULARY           DEFINITION                          EXAMPLE


Theoretical
Probability



  Equally
   likely




     Fair
Finding Theoretical Probability
What is the probability that a fair coin will and heads up?
                number or ways event can occur
P(heads) = Total number of possible outcomes

There are ________ outcomes: _______________ and _____________

                 number or ways event can occur
P(heads) =        2 possible outcomes

There is only one way for the coin to land heads up

                 1 way event can occur =
P(heads) =        2 possible outcomes

What is the probability of rolling a number less than 5 on a fair number cube?
                            number or ways event can occur
P(number less than 5) = Total number of possible outcomes

There are six outcomes: ____________________________

P(number less than 5) =      number or ways event can occur
                              6 possible outcomes

There four ways to roll less than 5: ________________________

P(number less than 5) =          4 way event can occur      =
                                  6 possible outcomes

Finding the probabilities of Events Not Happening
To find the probability of an event not happening, find the probability that it will
happen and subtract from 100%.

Suppose there is a 10% chance that it will rain tonight. What is the probability that
it will not rain?
P(rain) + P(not rain)=100%
         + P(not rain)= 100%
Find the probability of each event using the spinner.
1. landing on blue ___________________
2. landing on red____________________
3. landing on green _________________
4. not landing on blue ________________
Find the probability of each event using the bag of marbles.
5. picking a black marble ________________
6. picking a striped marble ________________
7. picking a white marble ________________
8. not picking a white marble ________________
A standard number cube is rolled. Find each probability.
9. P(2) ________________                10. P(even number) ________________
11. P(4 or 5) ________________          12. P(odd number) ________________
13. Out of 10 fair coin tosses, a coin landed tails up 4 times. How does this
experimental probability of a fair coin landing tails up compare to the theoretical
probability of the same event?
___________________________________________________________________
___________________________________________________________________
___________________________________________________________________
___________________________________________________________________
14. The probability of a spinner landing on blue is ¾. What is the probability of it
not landing on blue written as a percent?
A standard number cube is rolled. Find each probability
1. P(5) ________________              2. P(1, 2, or 3) ________________
3. P(1 or 4) ________________         4. P(negative number) ________________
5. P(even number) ____________        6. P(odd number) ________________
7. P(positive number) ___________     8. P(number less than 3) _______________
9. P(not 2) ________________          10. P(not 3 or 4) ________________
Seven pieces of paper with the numbers 1, 2, 3, 4, 4, 5, and 6 printed on them
are placed in a bag. A student chooses one without looking. Compare the
probabilities. Write <, >, or = .

11. P(1) ______P(5)                   12. P(2) ________P(4)




13. P(4 or 5) _______P(1 or 3)        14. P(less than 4) _______P(greater than 3)




15. Explain why this spinner could not be used for a fair experiment.
___________________________________________________________________
___________________________________________________________________
___________________________________________________________________
___________________________________________________________________
16. There is a 62% chance of rain tomorrow and a 19% chance of sleet. What is the
probability that neither event will occur?
Name _____________________________ Date ______________________
Mrs. Labuski & Mrs. Rooney Per ______ Lesson 11-3 Theoretical Probability

 VOCABULARY              DEFINITION                                  EXAMPLE
                    Probability when
Theoretical         all outcomes have         Theoretical probability ≈ number or ways event can occur
                   the same chance of                                   Total number of possible outcomes
Probability
                         occurring



                        When all
  Equally           outcomes have the
   likely            same chance of
                        occurring



                     An experiment
     Fair           with equally likely
                        outcomes
Finding Theoretical Probability
 What is the probability that a fair coin will and heads up?
                 number or ways event can occur
 P(heads) = Total number of possible outcomes

 There are 2      outcomes: heads         and tails

                  number or ways event can occur
 P(heads) =        2 possible outcomes

 There is only one way for the coin to land heads up

                  1 way event can occur = 1
 P(heads) =        2 possible outcomes    2

 What is the probability of rolling a number less than 5 on a fair number cube?
P(number less than 5) = number or ways event can occur
                            Total number of possible outcomes

 There are six outcomes: 1,2,3,4,5,6

 P(number less than 5) =      number or ways event can occur
                               6 possible outcomes

 There four ways to roll less than 5: 1,2,3,4

P(number less than 5) = 4 way event can occur          = 4 = 2
                              6 possible outcomes       6  3

 Finding the probabilities of Events Not Happening
 To find the probability of an event not happening, find the probability that it will
 happen and subtract from 100%.

 Suppose there is a 10% chance that it will rain tonight. What is the probability that
 it will not rain?
 P(rain) + P(not rain)=100%
   10% + P(not rain)= 100%
  -10%                  -10%
            P(not rain)= 90%
Find the probability of each event using the spinner.
1. landing on blue 3/5
2. landing on red 1/5
3. landing on green 1/5
4. not landing on blue 2/5
Find the probability of each event using the bag of marbles.
5. picking a black marble 4/9
6. picking a striped marble 1/3
7. picking a white marble 2/9
8. not picking a white marble 7/9
A standard number cube is rolled. Find each probability.
9. P(2) 1/6                             10. P(even number) 3/6 = ½
11. P(4 or 5) 2/6 = 1/3                 12. P(odd number) 3/6 = ½
13. Out of 10 fair coin tosses, a coin landed tails up 4 times. How does this
experimental probability of a fair coin landing tails up compare to the theoretical
probability of the same event?
experimental probability = 4/10 = 40% theoretical probability = ½ =50%
The experimental probability is 40%, which is less than the theoretical
      probability which is 50%.

14. The probability of a spinner landing on blue is ¾. What is the probability of it
not landing on blue written as a percent?    ¼ = 25%
A standard number cube is rolled. Find each probability
1. P(5) 1/6                           2. P(1, 2, or 3) 3/6 = ½
3. P(1 or 4) 1/3_____________         4. P(negative number) 0
5. P(even number) 3/6 = ½ ______      6. P(odd number) 3/6 = ½
7. P(positive number) 1 or 100%       8. P(number less than 3) 1/3
9. P(not 2) 5/6                       10. P(not 3 or 4) 4/6 = 2/3
Seven pieces of paper with the numbers 1, 2, 3, 4, 4, 5, and 6 printed on them
are placed in a bag. A student chooses one without looking. Compare the
probabilities. Write <, >, or = .

11. P(1)      =   P(5)                12. P(2)     <       P(4)
    1             1                       1                2
    7             7                       7                7




13. P(4 or 5)     >   P(1 or 3)       14. P(less than 4)    >     P(greater than 3)
    3                   2                       3                      4
    7                   7                       7                      7



15. Explain why this spinner could not be used for a fair experiment.
There is a greater chance of the spinner landing on red than on any other color
because there are two red sections and only one section of
every other color.

16. There is a 62% chance of rain tomorrow and a 19% chance of sleet. What is the
probability that neither event will occur?
   62%            100%
 + 19%            -81%                     19%
   81%            19%
Lesson 11 3 theoretical probability

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Lesson 11 3 theoretical probability

  • 1. Name ____________________________________ Date ______________________ Mrs. Labuski & Mrs. Rooney Period ______ Lesson 11-3 Theoretical Probability VOCABULARY DEFINITION EXAMPLE Theoretical Probability Equally likely Fair
  • 2. Finding Theoretical Probability What is the probability that a fair coin will and heads up? number or ways event can occur P(heads) = Total number of possible outcomes There are ________ outcomes: _______________ and _____________ number or ways event can occur P(heads) = 2 possible outcomes There is only one way for the coin to land heads up 1 way event can occur = P(heads) = 2 possible outcomes What is the probability of rolling a number less than 5 on a fair number cube? number or ways event can occur P(number less than 5) = Total number of possible outcomes There are six outcomes: ____________________________ P(number less than 5) = number or ways event can occur 6 possible outcomes There four ways to roll less than 5: ________________________ P(number less than 5) = 4 way event can occur = 6 possible outcomes Finding the probabilities of Events Not Happening To find the probability of an event not happening, find the probability that it will happen and subtract from 100%. Suppose there is a 10% chance that it will rain tonight. What is the probability that it will not rain? P(rain) + P(not rain)=100% + P(not rain)= 100%
  • 3. Find the probability of each event using the spinner. 1. landing on blue ___________________ 2. landing on red____________________ 3. landing on green _________________ 4. not landing on blue ________________ Find the probability of each event using the bag of marbles. 5. picking a black marble ________________ 6. picking a striped marble ________________ 7. picking a white marble ________________ 8. not picking a white marble ________________ A standard number cube is rolled. Find each probability. 9. P(2) ________________ 10. P(even number) ________________ 11. P(4 or 5) ________________ 12. P(odd number) ________________ 13. Out of 10 fair coin tosses, a coin landed tails up 4 times. How does this experimental probability of a fair coin landing tails up compare to the theoretical probability of the same event? ___________________________________________________________________ ___________________________________________________________________ ___________________________________________________________________ ___________________________________________________________________ 14. The probability of a spinner landing on blue is ¾. What is the probability of it not landing on blue written as a percent?
  • 4. A standard number cube is rolled. Find each probability 1. P(5) ________________ 2. P(1, 2, or 3) ________________ 3. P(1 or 4) ________________ 4. P(negative number) ________________ 5. P(even number) ____________ 6. P(odd number) ________________ 7. P(positive number) ___________ 8. P(number less than 3) _______________ 9. P(not 2) ________________ 10. P(not 3 or 4) ________________ Seven pieces of paper with the numbers 1, 2, 3, 4, 4, 5, and 6 printed on them are placed in a bag. A student chooses one without looking. Compare the probabilities. Write <, >, or = . 11. P(1) ______P(5) 12. P(2) ________P(4) 13. P(4 or 5) _______P(1 or 3) 14. P(less than 4) _______P(greater than 3) 15. Explain why this spinner could not be used for a fair experiment. ___________________________________________________________________ ___________________________________________________________________ ___________________________________________________________________ ___________________________________________________________________ 16. There is a 62% chance of rain tomorrow and a 19% chance of sleet. What is the probability that neither event will occur?
  • 5. Name _____________________________ Date ______________________ Mrs. Labuski & Mrs. Rooney Per ______ Lesson 11-3 Theoretical Probability VOCABULARY DEFINITION EXAMPLE Probability when Theoretical all outcomes have Theoretical probability ≈ number or ways event can occur the same chance of Total number of possible outcomes Probability occurring When all Equally outcomes have the likely same chance of occurring An experiment Fair with equally likely outcomes
  • 6. Finding Theoretical Probability What is the probability that a fair coin will and heads up? number or ways event can occur P(heads) = Total number of possible outcomes There are 2 outcomes: heads and tails number or ways event can occur P(heads) = 2 possible outcomes There is only one way for the coin to land heads up 1 way event can occur = 1 P(heads) = 2 possible outcomes 2 What is the probability of rolling a number less than 5 on a fair number cube? P(number less than 5) = number or ways event can occur Total number of possible outcomes There are six outcomes: 1,2,3,4,5,6 P(number less than 5) = number or ways event can occur 6 possible outcomes There four ways to roll less than 5: 1,2,3,4 P(number less than 5) = 4 way event can occur = 4 = 2 6 possible outcomes 6 3 Finding the probabilities of Events Not Happening To find the probability of an event not happening, find the probability that it will happen and subtract from 100%. Suppose there is a 10% chance that it will rain tonight. What is the probability that it will not rain? P(rain) + P(not rain)=100% 10% + P(not rain)= 100% -10% -10% P(not rain)= 90%
  • 7. Find the probability of each event using the spinner. 1. landing on blue 3/5 2. landing on red 1/5 3. landing on green 1/5 4. not landing on blue 2/5 Find the probability of each event using the bag of marbles. 5. picking a black marble 4/9 6. picking a striped marble 1/3 7. picking a white marble 2/9 8. not picking a white marble 7/9 A standard number cube is rolled. Find each probability. 9. P(2) 1/6 10. P(even number) 3/6 = ½ 11. P(4 or 5) 2/6 = 1/3 12. P(odd number) 3/6 = ½ 13. Out of 10 fair coin tosses, a coin landed tails up 4 times. How does this experimental probability of a fair coin landing tails up compare to the theoretical probability of the same event? experimental probability = 4/10 = 40% theoretical probability = ½ =50% The experimental probability is 40%, which is less than the theoretical probability which is 50%. 14. The probability of a spinner landing on blue is ¾. What is the probability of it not landing on blue written as a percent? ¼ = 25%
  • 8. A standard number cube is rolled. Find each probability 1. P(5) 1/6 2. P(1, 2, or 3) 3/6 = ½ 3. P(1 or 4) 1/3_____________ 4. P(negative number) 0 5. P(even number) 3/6 = ½ ______ 6. P(odd number) 3/6 = ½ 7. P(positive number) 1 or 100% 8. P(number less than 3) 1/3 9. P(not 2) 5/6 10. P(not 3 or 4) 4/6 = 2/3 Seven pieces of paper with the numbers 1, 2, 3, 4, 4, 5, and 6 printed on them are placed in a bag. A student chooses one without looking. Compare the probabilities. Write <, >, or = . 11. P(1) = P(5) 12. P(2) < P(4) 1 1 1 2 7 7 7 7 13. P(4 or 5) > P(1 or 3) 14. P(less than 4) > P(greater than 3) 3 2 3 4 7 7 7 7 15. Explain why this spinner could not be used for a fair experiment. There is a greater chance of the spinner landing on red than on any other color because there are two red sections and only one section of every other color. 16. There is a 62% chance of rain tomorrow and a 19% chance of sleet. What is the probability that neither event will occur? 62% 100% + 19% -81% 19% 81% 19%