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Stat 321 – Day 23 Point Estimation (6.1)
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Last Time Confidence interval for vs. prediction interval One-sample t Confidence interval in Minitab Needs normal population or large n Prediction interval “by hand” Wider than confidence interval Needs normal population
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Last Time Confidence interval for p = population proportion of successes from large population or a process (e.g., coin tossing) So a binomial random variable underneath Random sample from population of interest Large enough sample size:
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Example 2 Sample proportion.66; n = 1013 Can assume 95%.66 + 1.96 .66(.34)/1013.66 +.029 (margin of error 3%) We are 95% confidence that between 63% and 69% of all internet users never read blogs The interval lies entirely above.5, so we are 95% confident more than half don’t read blogs
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Some Precautions Finding voters Margin-of-error doesn’t measure “non-sampling” errors Alien visits U.S. Senate, wants to estimate proportion of humans who are female Biased sample Confidence interval not needed if one’s data is from population, not sample We are 100% confident that p =.16! Claimed to vote…
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Choosing a confidence interval formula Were the data collected properly? Is data quantitative (e.g., measurements) or categorical (e.g., blog reader?, binomial)? If categorical: Is n large enough to use the “Wald” procedure? If not, use “adjusted Wald” If quantitative: Is known? Hah! If not, are conditions met for t-interval? Look at behavior of sample, probability plot
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Example 5 If given the choice, which would you prefer to hear first: good news or bad?
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The Big Picture Want to make a conclusion about unobserved population based on observing a small sample, randomly selected from the population So far have looked at and p The sampling distributions of the sample mean and sample proportion behave very predictably and very nicely… What about other parameters? Population Sample Probability Statistics
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Example 1: Heroin Addiction Caplehorn and Bell (1991) investigated the times that heroin addicts remained in a clinic Data = time stayed in facility until treatment terminated or study ended What would you like to estimate about the population?
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Consideration of other estimators Median “Typical time” Less influenced by outliers… But what is the behavior of the median in repeated sampling?? Is the sample median a reasonable predictor of the population median?
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Properties of Estimators Unbiased = Expected value of estimator is equal to parameter Mean of sampling distribution of estimator is at parameter E( ) = Variance of estimator Prefer estimators with smaller variances
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Sampling distribution of median Empirically: generate lots of samples from known population, e.g. n=5, calculate median for each sample, look at distribution Is mean of sampling distribution equal to population median? Mean of medians ≠ ũ
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Sampling distribution of median Sample median is not considered an unbiased estimator of the population median With a normal population, Scottish militiamen Mean = = 39.832 Median =ũ = 40.00 sample median is an unbiased estimator of population mean! But with more variability than sample mean
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Example 3: Estimating 2 Take population with 2 = 71745.2 Mean = 71412 Mean = 51730 Unbiased!Biased - too low
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Example 3: Estimating 2 S 2 is an unbiased estimator for 2 See proof of E(S 2 )= 2 in text! Although S is a biased estimator for
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For Thursday Quiz on HW 7 Will collect information for lab 8 in class Hw problem 4, part (d)
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