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Sampling Distribution of a Sample Proportion

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Title: Sampling Distribution of a Sample Proportion


1
Sampling Distribution of a Sample Proportion
  • Lecture 26
  • Sections 8.1 8.2
  • Wed, Mar 8, 2006

2
Preview of the Central Limit Theorem
  • We looked at the distribution of the sum of 1, 2,
    and 3 uniform random variables U(0, 1).
  • We saw that the shapes of their distributions was
    moving towards the shape of the normal
    distribution.
  • If we replace sum with average, we will
    obtain the same phenomenon, but on the scale from
    0 to 1 each time.

3
Preview of the Central Limit Theorem
2
1
0
1
4
Preview of the Central Limit Theorem
2
1
0
1
5
Preview of the Central Limit Theorem
2
1
0
1
6
Preview of the Central Limit Theorem
  • Some observations
  • Each distribution is centered at the same place,
    ½.
  • The distributions are being drawn in towards
    the center.
  • That means that their standard deviation is
    decreasing.
  • Can we quantify this?

7
Preview of the Central Limit Theorem
2
  • ½
  • ?2 1/12

1
0
1
8
Preview of the Central Limit Theorem
2
  • ½
  • ?2 1/24

1
0
1
9
Preview of the Central Limit Theorem
2
  • ½
  • ?2 1/36

1
0
1
10
Preview of the Central Limit Theorem
  • This tells us that a mean based on three
    observations is much more likely to be close to
    the population mean than is a mean based on only
    one or two observations.

11
Parameters and Statistics
  • THE PURPOSE OF A STATISTIC IS TO ESTIMATE A
    POPULATION PARAMETER.
  • A sample mean is used to estimate the population
    mean.
  • A sample proportion is used to estimate the
    population proportion.
  • Sample statistics, by their very nature, are
    variable.
  • Population parameters are fixed.

12
Some Questions
  • We hope that the sample proportion is close to
    the population proportion.
  • How close can we expect it to be?
  • Would it be worth it to collect a larger sample?
  • If the sample were larger, would we expect the
    sample proportion to be closer to the population
    proportion?
  • How much closer?

13
The Sampling Distribution of a Statistic
  • Sampling Distribution of a Statistic The
    distribution of values of the statistic over all
    possible samples of size n from that population.

14
The Sample Proportion
  • Let p be the population proportion.
  • Then p is a fixed value (for a given population).
  • Let p (p-hat) be the sample proportion.
  • Then p is a random variable it takes on a new
    value every time a sample is collected.
  • The sampling distribution of p is the
    probability distribution of all the possible
    values of p.

15
Example
  • Suppose that this class is 3/4 freshmen.
  • Suppose that we take a sample of 2 students,
    selected with replacement.
  • Find the sampling distribution of p.

16
Example
17
Example
  • Let X be the number of freshmen in the sample.
  • The probability distribution of X is

x P(x)
0 1/16
1 6/16
2 9/16
18
Example
  • Let p be the proportion of freshmen in the
    sample. (p X/n.)
  • The sampling distribution of p is

x P(p x)
0 1/16
1/2 6/16
1 9/16
19
Samples of Size n 3
  • If we sample 3 people (with replacement) from a
    population that is 3/4 freshmen, then the
    proportion of freshmen in the sample has the
    following distribution.

x P(p x)
0 1/64 .02
1/3 9/64 .14
2/3 27/64 .42
1 27/64 .42
20
Samples of Size n 4
  • If we sample 4 people (with replacement) from a
    population that is 3/4 freshmen, then the
    proportion of freshmen in the sample has the
    following distribution.

x P(p x)
0 1/256 .004
1/4 12/256 .05
2/4 54/256 .21
3/4 108/256 .42
1 81/256 .32
21
The Parameters of the Sampling Distributions
  • When n 1, the sampling distribution is
  • The mean and standard deviation are
  • ? 3/4 0.75
  • ?2 3/16 0.1875

p P(p)
0 1/4
1 3/4
22
The Parameters of the Sampling Distributions
  • When n 2, the sampling distribution is
  • The mean and standard deviation are
  • ? 3/4 0.75
  • ?2 3/32 0.09375

p P(p)
0 1/16
1/2 6/16
1 9/16
23
The Parameters of the Sampling Distributions
  • When n 3, the sampling distribution is
  • The mean and standard deviation are
  • ? 3/4 0.75
  • ?2 3/48 0.0625

p P(p)
0 1/64 .02
1/3 9/64 .14
2/3 27/64 .42
1 27/64 .42
24
The Parameters of the Sampling Distributions
  • When n 4, the sampling distribution is
  • The mean and standard deviation are
  • ? 3/4 0.75
  • ?2 3/64 0.046875

p P(p)
0 1/256 .004
1/4 12/256 .05
2/4 54/256 .21
3/4 108/256 .42
1 81/256 .32
25
Sampling Distributions
  • Run the program
  • Central Limit Theorem for Proportions.exe.
  • Use n 30 and p 0.75 generate 100 samples.

26
100 Samples of Size n 30
?? 0.75
?? 0.079
27
Observations and Conclusions
  • Observation 1 The values of p are clustered
    around p.
  • Conclusion 1 p is probably close to p.

28
Larger Sample Size
  • Now we will select 100 samples of size 120
    instead of size 30.
  • Run the program
  • Central Limit Theorem for Proportions.exe.
  • Pay attention to the spread (standard deviation)
    of the distribution.

29
100 Samples of Size n 120
?? 0.75
?? 0.0395
30
Observations and Conclusions
  • Observation 2 As the sample size increases, the
    clustering is tighter.
  • Conclusion 2A Larger samples give more reliable
    estimates.
  • Conclusion 2B For sample sizes that are large
    enough, we can make very good estimates of the
    value of p.

31
Larger Sample Size
  • Now we will select 10000 samples of size 120
    instead of only 100 samples.
  • Run the program
  • Central Limit Theorem for Proportions.exe.
  • Pay attention to the shape of the distribution.

32
10,000 Samples of Size n 120
?? 0.75
?? 0.0395
33
10,000 Samples of Size n 126
34
More Observations and Conclusions
  • Observation 3 The distribution of p appears to
    be approximately normal.

35
One More Conclusion
  • Conclusion 3 We can use the normal distribution
    to calculate just how close to p we can expect p
    to be.
  • However, we must know the values of ? and ? for
    the distribution of p.
  • That is, we have to quantify the sampling
    distribution of p.

36
The Sampling Distribution of p
  • It turns out that the sampling distribution of p
    is approximately normal with the following
    parameters.
  • This is the Central Limit Theorem for
    Proportions, summarized on page 519.

37
The Sampling Distribution of p
  • The approximation to the normal distribution is
    excellent if

38
Why Surveys Work
  • Suppose 51 of the population plan to vote for
    candidate X, i.e., p 0.51.
  • What is the probability that an exit survey of
    1000 people would show candidate X with less than
    45 support, i.e., p lt .45?

39
Why Surveys Work
  • First, describe the sampling distribution of p
    if the sample size is n 1000 and p 0.51.
  • Check np 510 ? 5 and n(1 p) 490 ? 5.
  • p is approximately normal.

40
Why Surveys Work
  • The z-score of 0.45 is z (0.45 0.51)/.01581
    -3.795.
  • P(p lt 0.45) P(Z lt -3.795)
  • 0.00007385 (not likely!)
  • Or use normalcdf(-E99, 0.45, 0.51, 0.01581).

41
Why Surveys Work
  • Perform the same calculation, but with a smaller
    sample size, say n 50.
  • The probability turns out to be 0.1980, nearly a
    20 chance.
  • By symmetry, there is also a 20 chance that the
    sample proportion is greater than 57.
  • Thus, there is a 40 chance that the sample
    proportion is off by at least 6 percentage points.
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