Transcript Probability
Learning Objectives
In this chapter you will learn
the basic rules of probability
about estimating the probability of
the occurrence of an event
the Central Limit Theorem
how to establish confidence
intervals
Types of Probability
Three approaches to probability
Mathematical
Empirical
Subjective
Mathematical Probability
Mathematical (or classical) probability
based on equally likely outcomes that
can be calculated
useful when equal chance of
outcomes and random selection is
possible
Example
20 people are arrested for crimes
2 are innocent
If one of the accused is picked
randomly, what is the probability of
selecting and innocent person?
Solution
2/20 or .1 – 10% chance of picking an innocent
person
Empirical Probability
Empirical probability
uses the frequency of past events
to predict the future
calculated
the number of times an event occurred in
the past
divided by the number of observations
Example
75,000 autos were registered in
the county last year
650 were reported stolen
What is the probability of having a
car stolen this year?
Solution
650/75,000 .009 or .9%
Subjective Probability
Subjective probability
based on personal reflections of an
individual’s opinion about an event
used when no other information is
available
Example
What is the probability that Al
Gore will win the next presidential
election?
Obviously, the answer depends on
who you ask!
Probability Rules
We sometimes need to combine
the probability of events
two fundamental methods of
combining probabilities are
by addition
by multiplication
The Addition Rule
The Addition Rule
if two events are mutually exclusive
(cannot happen at the same time)
the probability of their occurrence is
equal to the sum of their separate
probabilities
P(A or B) = P(A) + P(B)
Example
What is the probability that an
odd number will result from the
roll of a single die?
6 possible outcomes, 3 of which
are odd numbers
1 1 1 1
Formula
.50
6
6
6
2
The Multiplication Rule
Suppose that we want to find
the probability of two (or more events)
occurring together?
The Multiplication Rule
probability of events are NOT mutually
exclusive
equals the product of their separate
probabilities
P(B|A) = P(A) times P(B|A)
Example
Two cards are selected, without
replacement, from a standard deck
What is probability of selecting a 10
and a 4?
P(B|A) = P(A) times P(B|A)
4
4
16
.006
52 51 2652
Laws of Probability
The probability that an event will occur
is equal to the ratio of “successes” to the
number of possible outcomes
the probability that you would flip a coin
that comes up “heads” is one out of two or
50%
Gambler’s Fallacy
Probability of flipping a head
extends to the next toss and every toss
thereafter
mistaken belief that
if you tossed ten heads in a row
the probability of tossing another is
astronomical
in fact, it has never changed – it is still
50%
Calculating Probability
You can calculate the probability
of any given total that can be
thrown in a game of “Craps”
each die has 6 sides
when a pair of dice is thrown,
there are how many possibilities?
Outcomes of Rolling Dice
Die #1 Roll
Die #2
Roll
1
2
3
4
5
6
1
2
3
4
5
6
2
3
4
5
6
7
3
4
5
6
7
8
4
5
6
7
8
9
5
6
7
8
9
10
6
7
8
9
10
11
7
8
9
10
11
12
Number of Ways to Roll Each Total
Total Roll
2
3
4
5
6
7
8
9
10
11
12
N of Ways
1
2
3
4
5
6
5
4
3
2
1
Winning or Not?
What is the probability of….
losing on the first roll?
1/36 + 2/36+ 1+36 = 4/36 or
11.1%
rolling a ten?
3/36 or 1/12 = 8.3%
Next Roll
making the point on the next roll?
now we calculate probability
P(10) + P(any number, any roll) = 1/3
(1/12) times (1/3) = 2.8%
Making the Point
The probability of making the point for
any number
to calculate this probability
use both the Addition Rule and the
Multiplication Rule
the probability of two events that are not mutually
exclusive are the product of their separate
probability
Continuing
Add the separate probabilities of rolling
each type of number
P(10) x P (any number, any roll) = 1/12 x 1/3
= 1/36 or 2.8% is the P of two 10s or two 4s
P of two 5s or two 9s = (1/9) (2/5) = 2/45 =
4.4%
P of two 6s or two 8s = (5/36) (5/11) =
25/396 = 6.3%
Who Really Wins?
Add up all the probabilities of winning
(2/9) + 2 (1/36) + 2 (2/45) + 2
(25/396) = (2/9) + (4/45) + (25/198)
= 244/495 or 49.3%
What is the probability that you will
lose in the long run or that the
Casino wins?
Empirical Probability
Empirical probability is based upon
research findings
Example: Study of Victimization
Rates among American Indians
Which group had the greatest rate
of violent crime victimizations?
The lowest rate?
Violent Crime Victimization By Age,
Race, & Sex of Victim, 1992 - 1996
Percent of Violent Crime Victimization
Highest rate
byAmerican
race & age
Victim
Age/Sex
Indian
12 – 17
20.4%
18 – 24
31.5
25 – 34
23.5
35 – 44
18.0
45 – 54
4.7
55 & Older
1.9
MALE
58.9
FEMALE Lowest
41.1rate
by race & age
White
23.8%
23.4
23.6
17.1
7.8
4.3
58.4
41.6
Black
26.8%
24.0
23.2
16.6
6.1
3.3
50.5
49.5
Asian
24.0%
21.7
26.3
18.3
7.3
2.4
62.6
37.4
Total
24.2%
23.6
23.6
17.0
7.5
4.1
57.4
42.6
Using Probability
We use probability every day
statements such as
will it may rain today?
will the Red Sox win the World Series?
will someone break into my house?
We use a model to illustrate probability
the normal distribution
The Normal Distribution
Approximately 68% of area
under the curve falls with
1 standard deviation from
68.26% the mean
Approximately
1.5% of area
falls beyond
3 standard
deviations
|
|
95.44%
99.72%
|
|
-3σ -2σ -1σ μ +1σ +2σ +3σ
Z Scores
The standard score, or z-score
represents the number of standard
deviations
a random variable x falls from the
mean μ
value - mean
x
z
standard deviation
Example
The mean of test scores is 95 and
the standard deviation is 15
find the z-score for a person who
scored an 88
Solution
88 95
0.467
15
Example Continued
We then convert the z-score into
the area under the curve
look at Appendix A.2 in the text
the fist column is the first & second
values of z (0.4)
the top row is the third value (6)
cumulative area = .3228
Another Use of Probability
We can also take advantage of
probability when we draw samples
social scientists like the properties
of the normal distribution
the Central Limit Theorem is
another example of probability
The Central Limit Theorem
If repeated random samples
of a given size are drawn
from any population (with a mean of
and a variance of )
then as the sample size becomes large
the sampling distribution of sample
means approaches normality
Example
Dot/Lines
15
10
Count
Roll a pair of dice
100 times
The shape of the
distribution of
outcomes will
resemble this
figure
5
0
2.5
5.0
7.5
v1
10.0
Standard Error of the
Sample Means
The standard error of the sample
means
is the standard deviation
of the sampling distribution of the
sample means
x
n
Standard Error of the
Sample Means
If is not known and n 30
the standard deviation of the
sample, designated s
is used to approximate the
population standard deviation
the formula for the standard error
then becomes:
s
sx
n
Confidence Intervals
An Interval Estimate states the range
within which a population parameter
probably lies
the interval within which a population
parameter is expected to occur is called
a confidence interval
two confidence intervals commonly
used are the 95% and the 99%
Constructing Confidence
Intervals
In general, a confidence interval
for the mean is computed by:
s
X Z
n
95% and 99%
Confidence Intervals
95% CI for the population mean is
calculated by
s
X 1.96
n
99% CI for the population mean is
calculated by
s
X 2.58
n
Summary
Social scientists use probability
to calculate the likelihood that an
event will occur
in various combinations
for various purposes (estimating a
population parameter, distribution
of scores, etc.)