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Chapter 18: Sampling Distribution Models

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Toss a pair of dice 10,000 times, take the average, and plot the histogram of the average. Now toss three die, take the average, and plot the histogram of the average. ... – PowerPoint PPT presentation

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Title: Chapter 18: Sampling Distribution Models


1
Chapter 18Sampling Distribution Models
2
Modeling the Distribution of Sample Proportions
  • Simulate many independent random samples of equal
    size
  • Keep the same probability of success
  • Histogram of the proportions of the simulated
    samples
  • Unimodal
  • Symetric
  • Centered at p

3
Normal Model
  • The center of the histogram is naturally at p, so
    the mean of the normal, is at p.
  • Once we know p, we automatically know the
    standard deviation.
  • Standard deviation
  • Therefore, model the distribution of the sample
    proportions with a probability model that is
  • Because we have a normal curve, we can use the
    68-95-99.7 Rule.

4
Assumptions and Conditions
  • Assumptions
  • The sampled values must be independent of each
    other.
  • The sample size, n, must be large enough.
  • Conditions
  • 10 condition if the sampling has not been made
    with replacement, then the sample size, n, must
    be no larger than 10 of the population.
  • Success/Failure condition The sample size has to
    be big enough that both np and nq are greater
    than 10.

5
The Sampling Distribution Modelfor a Proportion
  • In other words, provided that the sampled values
    are independent and the sample size is large
    enough, the sampling distribution of is
    modeled by a Normal model with mean

6
Means
  • A sample mean also has a sampling distribution
  • Simulation (pp. 353 354)
  • Toss a pair of dice 10,000 times, take the
    average, and plot the histogram of the average.
  • Now toss three die, take the average, and plot
    the histogram of the average.
  • Now toss five die, take the average, and plot the
    histogram of the average.
  • What is happening to the shape of the histogram?

7
The Fundamental Theorem of Statistics
  • Central Limit Theorem
  • The sampling distribution model of the sample
    mean (and proportion) is approximately Normal for
    large n, regardless of the distribution of the
    population, as long as the observations are
    independent.
  • The Central Limit Theorem (CLT) talks about the
    means of different samples drawn from the same
    population, called a sampling distribution model.

8
Central Limit Theorem
  • As the sample size, n, increases, the mean of n
    independent values has a sampling distribution
    that tends towards a Normal model with

9
Assumptions and Conditions
  • Random sampling condition the values must be
    sampled randomly or the concept of a sampling
    distribution makes no sense.
  • Independence assumption the sampled values must
    be mutually independent. When the sample is
    drawn without replacement, use the
  • 10 condition the sample size, n, is no more
    than 10 of the population.

10
Law of Diminishing Returns
  • The standard deviation of the sampling
    distribution declines only with the square root
    of the sample size.
  • The square root limits how much we can make a
    sample tell about the population.

11
Standard Error
  • Often we only know the observed proportion or
    the sample standard deviation, s.
  • Whenever we estimate the standard deviation of a
    sampling distribution, we call it a standard
    error.
  • For a proportion, the standard error of is
  • For a sample mean, the standard error is

12
WATCH OUT!!
  • Beware of observations that are not independent.
  • Look out for small samples from skewed
    populations.
  • Dont confuse the sampling distribution with the
    distribution of the sample.
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