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Sampling Distributions

Sampling Distributions. A review by Hieu Nguyen (03/27/06). Parameter vs Statistic. A parameter is a description for the entire population.

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Sampling Distributions

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  1. Sampling Distributions A review by Hieu Nguyen(03/27/06)

  2. Parameter vs Statistic • A parameter is a description for the entire population. • Example:A parameter for the US population is the proportion of all people who support President Bush’s nomination of Samuel Alito to the Supreme Court. • p=.74

  3. Parameter vs Statistic • A statistic is a description of a sample taken from the population. It is only an estimate of the population parameter. • Example:In a poll of 1001 Americans, 73% of those surveyed supported Alito’s nomination. • p-hat=.73

  4. Bias • The bias of a statistic is a measure of its difference from the population parameter. • A statistic is unbiased if it exactly equals the population parameter. • Example:The poll would have been unbiased if 74% of those surveyed approved of Alito’s nomination. • p-hat=.74=p

  5. Sampling Variability • Samples naturally have varying results. The mean or sample proportion of one sample may be different from that of another. • In the poll mentioned before p-hat=.73. • A repetition of the same poll may have p-hat=.75.

  6. Central Limit Theorem (CLT) • Populations that are wildly skewed may cause samples to vary a great deal. • However, the CLT states that these samples tend to have a sample proportion (or mean) that is close to the population parameter. • The CLT is very similar to the law of large numbers.

  7. CLT Example • Imagine that many polls of 1001 Americans are done to find the proportion of those who supported Alito’s nomination. • Although the poll results vary, more samples have a mean that is close to the population parameter μ=.74.

  8. CLT Example • Plot the mean of all samples to see the effects of the CLT. Notice how there are more sample means near the population parameter μ=.74. • This histogram is actually a sampling distribution

  9. Sampling Distributions: Definition • Textbook definition:A sampling distribution is the distribution of values taken by the statistic in all possible samples of the same size from the same population. • In other words, a sampling distribution is a histogram of the statistics from samples of the same size of a population.

  10. Two Most Common Types of Sampling Distributions • Sample Proportion Distribution • Distribution of the sample proportions of samples from a population • Sample Mean Distribution • Distribution of the sample means of samples from a population • For both types, the ideal shape is a normal distribution

  11. Sampling Distributions: Conditions • Before assuming that a sampling distribution is normal, check the following conditions: • Plausible Independence • Randomness • Each sample is less than 10% of the population

  12. Sampling Distributions As Normal Distributions • When all conditions met, the sampling distribution can be considered a normal distribution with a center and a spread. • Note:With sample proportion distributions, another condition must be meet: • Success-failure conditon – there must be at least 10 success and 10 failures according to the population parameter and sample size

  13. Sample Proportion Distribution p = population proportion (given) Sample Mean Distribution μ = population mean (given) σ = population standard deviation (given) Sampling Distributions As Normal Distributions: Equations

  14. Sampling Distributions As Normal Distributions: Note • Note:If any of the parameters are unknown, use the statistics from a sample to approximate it.

  15. Using Sampling Distributions • Sampling Distributions can estimate the probability of getting a certain statistic in a random sample. • Use z-scores or the NormalCDF function in the TI-83/84.

  16. Using Sampling Distributions: Z-Scores w/ Example • Use the z-score table to find appropriate probabilities Example:Find the probability that a poll of Americans that support Alito’s nomination will return a sample proportion of .72.

  17. Using Sampling Distributions: NormalCDF Function w/ Example • The syntax for the NormalCDF function is: • NormalCDF(lower limit, upper limit, μ, σ) Example:Find the probability that a sample of size 25 will have a mean of 5 given that the population has a mean of 7 and a standard deviation of 3.

  18. Sampling Distribution for Two Populations • Use a difference sampling distribution if the question presents 2 different populations.

  19. Sampling Distribution for Two Populations: Example (adapted from AP Statistics – Chapter 9 – Sampling Distribution Multiple Choice Questions Medium oranges have a mean weight of 14oz and a standard deviation of 2oz. Large oranges have a mean weight of 18oz and a standard deviation of 3oz. Find the probability of finding a medium orange that weights more than a large orange.

  20. Example Problem (adapted from DeVeau Sampling Distribution Models Exercise #42) Ayrshire cows average 47 pounds if milk a day, with a standard deviation of 6 pounds. For Jersey cows, the mean daily production is 43 pounds, with a standard deviation of 5 pounds. Assume that Normal models describe milk production for these breeds. • A) We select an Ayrshire at random. What’s the probability that she averages more than 50 pounds of milk a day? • B) What’s the probability that a randomly selected Ayrshire gives more milk than a randomly selected Jersey? • C) A farmer has 20 Jerseys. What’s the probability that the average production for this small herd exceeds 45 pounds of milk a day? • D) A neighboring farmer has 10 Ayrshires. What’s the probability that his herd average is at least 5 pounds higher than the average for the Jersey herd?

  21. Example Problem Solution First, check the assumptions: • Independent samples • Randomness • Sample represents less than 10% of population

  22. Example Problem Solution A) Use the normal model to estimate the appropriate probability.

  23. Example Problem Solution B) Create a normal model for the difference between Ayrshires and Jerseys. Use the model to estimate the appropriate probability.

  24. Example Problem Solution C) Create a sampling distribution model for which n=20 Jerseys. Use the model to estimate the appropriate probability.

  25. Example Problem Solution D) First create a sampling distribution model for 10 random Ayrshires and 20 random Jerseys. Then create a normal model for the difference between the 10 Ayrshires and 20 Jerseys.

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