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Chapter 10
Introducing Probability

Chapter 10

1
Idea of Probability
Probability is the science of chance
behavior
Chance behavior is unpredictable in the
short run but has a regular and
predictable pattern in the long run
– this is why we can use probability to gain
useful results from random samples and
randomized comparative experiments
Chapter 10

2
Randomness and Probability
Random: individual outcomes are
uncertain but there is a regular
distribution of outcomes in a large
number of repetitions
Relative frequency (proportion of
occurrences) of an outcome settles down
to one value over the long run. That one
value is then defined to be the
probability of that outcome.

Chapter 10

3
Relative-Frequency Probabilities
Can be determined (or checked) by
observing a long series of independent
trials (empirical data)
– experience with many samples
– simulation (computers, random number
tables)

Chapter 10

4
Relative-Frequency Probabilities
Coin flipping:

Chapter 10

5
Probability Models
The sample space S of a random
phenomenon is the set of all possible
outcomes.
An event is an outcome or a set of
outcomes (subset of the sample space).
A probability model is a mathematical
description of long-run regularity
consisting of a sample space S and a way
of assigning probabilities to events.
Chapter 10

6
Probability Model for Two Dice
Random phenomenon: roll pair of fair dice.
Sample space:

Probabilities: each individual outcome has
probability 1/36 (.0278) of occurring.
Chapter 10

7
Probability Rule 1
Any probability is a number between
0 and 1.
A probability can be interpreted as the
proportion of times that a certain event can
be expected to occur.
If the probability of an event is more than 1,
then it will occur more than 100% of the time
(Impossible!).

Chapter 10

8
Probability Rule 2
All possible outcomes together must
have probability 1.
Because some outcome must occur on every
trial, the sum of the probabilities for all
possible outcomes must be exactly one.
If the sum of all of the probabilities is less
than one or greater than one, then the
resulting probability model will be incoherent.

Chapter 10

9
Probability Rule 3
If two events have no outcomes in common,
they are said to be disjoint. The probability
that one or the other of two disjoint events
occurs is the sum of their individual
probabilities.
Age of woman at first child birth
– under 20: 25%
24 or younger: 58%
– 20-24: 33%
– 25+: ? Rule 3 (or 2): 42%

}

Chapter 10

10
Probability Rule 4
The probability that an event does
not occur is 1 minus the probability
that the event does occur.
As a jury member, you assess the probability
that the defendant is guilty to be 0.80. Thus
you must also believe the probability the
defendant is not guilty is 0.20 in order to be
coherent (consistent with yourself).
If the probability that a flight will be on time
is .70, then the probability it will be late is .30.
Chapter 10

11
Probability Rules:
Mathematical Notation

Chapter 10

12

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Class xi chapter_10_probability

  • 2. Idea of Probability Probability is the science of chance behavior Chance behavior is unpredictable in the short run but has a regular and predictable pattern in the long run – this is why we can use probability to gain useful results from random samples and randomized comparative experiments Chapter 10 2
  • 3. Randomness and Probability Random: individual outcomes are uncertain but there is a regular distribution of outcomes in a large number of repetitions Relative frequency (proportion of occurrences) of an outcome settles down to one value over the long run. That one value is then defined to be the probability of that outcome. Chapter 10 3
  • 4. Relative-Frequency Probabilities Can be determined (or checked) by observing a long series of independent trials (empirical data) – experience with many samples – simulation (computers, random number tables) Chapter 10 4
  • 6. Probability Models The sample space S of a random phenomenon is the set of all possible outcomes. An event is an outcome or a set of outcomes (subset of the sample space). A probability model is a mathematical description of long-run regularity consisting of a sample space S and a way of assigning probabilities to events. Chapter 10 6
  • 7. Probability Model for Two Dice Random phenomenon: roll pair of fair dice. Sample space: Probabilities: each individual outcome has probability 1/36 (.0278) of occurring. Chapter 10 7
  • 8. Probability Rule 1 Any probability is a number between 0 and 1. A probability can be interpreted as the proportion of times that a certain event can be expected to occur. If the probability of an event is more than 1, then it will occur more than 100% of the time (Impossible!). Chapter 10 8
  • 9. Probability Rule 2 All possible outcomes together must have probability 1. Because some outcome must occur on every trial, the sum of the probabilities for all possible outcomes must be exactly one. If the sum of all of the probabilities is less than one or greater than one, then the resulting probability model will be incoherent. Chapter 10 9
  • 10. Probability Rule 3 If two events have no outcomes in common, they are said to be disjoint. The probability that one or the other of two disjoint events occurs is the sum of their individual probabilities. Age of woman at first child birth – under 20: 25% 24 or younger: 58% – 20-24: 33% – 25+: ? Rule 3 (or 2): 42% } Chapter 10 10
  • 11. Probability Rule 4 The probability that an event does not occur is 1 minus the probability that the event does occur. As a jury member, you assess the probability that the defendant is guilty to be 0.80. Thus you must also believe the probability the defendant is not guilty is 0.20 in order to be coherent (consistent with yourself). If the probability that a flight will be on time is .70, then the probability it will be late is .30. Chapter 10 11