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Confidence Intervals I 2/1/12

Confidence Intervals I 2/1/12. Correlation (continued) Population parameter versus sample statistic Uncertainty in estimates Sampling distribution Confidence interval. Section 3.1. Professor Kari Lock Morgan Duke University. Correlation Guessing Game.

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Confidence Intervals I 2/1/12

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  1. Confidence Intervals I 2/1/12 • Correlation (continued) • Population parameter versus sample statistic • Uncertainty in estimates • Sampling distribution • Confidence interval • Section 3.1 • Professor Kari Lock Morgan • Duke University

  2. Correlation Guessing Game http://istics.net/gett/gcstart.php?group_id=duke Highest scorer in the class gets one extra point on the first exam!

  3. Correlation NFL Teams r = 0.43

  4. Correlation r = 0.08 Same plot, but with Dolphins and Raiders (outliers) removed

  5. X Y Human Cannonball Plot Y vs. X • What is the correlation between X and Y? • r > 0 • r < 0 • r = 0 • Are X and Y associated? • Yes • No

  6. Correlation Cautions • Correlation can be heavily affected by outliers. Always plot your data! • r = 0 means no linear association. The variables could still be otherwise associated. Always plot your data! • Correlation does not imply causation!

  7. Summary: Two Quantitative Variables • Summary Statistics • Correlation • Visualization • Scatterplot

  8. The Big Picture Sample Population Sampling Statistical Inference

  9. Parameter vs Statistic • A sample statisticis a number computed from sample data. • A population parameter is a number that describes some aspect of a population • We usually have a sample statistic and want to make inferences about the population parameter

  10. The Big Picture Sample Population Sampling PARAMETERS STATISTICS Statistical Inference

  11. Parameter vs Statistic mu sigma rho beta

  12. Obama’s Approval Rating • Gallup surveyed 1500 Americans between Jan 28-30, 2012, and 46% of these people approve of the job Barack Obama is doing as president • What do you think is the true proportion of Americans who approve of the job Barack Obama is doing as president? • http://www.gallup.com/poll/113980/Gallup-Daily-Obama-Job-Approval.aspx

  13. Point and Interval Estimates • The sample statistic gives a point estimateof the population parameter (a single number) • Usually, it is more useful to provide an interval estimate which gives a range of plausible values for the population parameter: • How do we determine the margin of error???

  14. Obama

  15. Obama’s Approval Rating • Between 43% and 49% of Americans currently approve of the job Obama is doing as president

  16. IMPORTANT POINTS • Sample statistics vary from sample to sample. (they will not match the parameter exactly) • KEY QUESTION: For a given sample statistic, what are plausible values for the population parameter? How much uncertainty surrounds the sample statistic? • KEY ANSWER: It depends on how much the statistic varies from sample to sample!

  17. Reese’s Pieces • What proportion of Reese’s pieces are orange? • Take a random sample of 10 Reese’s pieces • What is your sample proportion?  class dotplot • Give a range of plausible values for the population proportion

  18. Sampling Distribution • A sampling distributionis the distribution of statistics computed for different samples of the same size taken from the same population • The sampling distribution shows us how the statistic varies from sample to sample • We can use the spread of the sampling distribution to determine the margin of error for a statistic

  19. Sampling Distribution • In the Reese’s pieces sampling distribution, what does each dot represent? • One Reese’s piece • One sample statistic

  20. Sampling Distribution • The higher the standard deviation of the sampling distribution, the • (a) higher • (b) lower • the margin of error

  21. Sample Size • http://www.rossmanchance.com/applets/Reeses/ReesesPieces.html n = 10 n = 50 n = 100 • For a larger sample size you get less variability in the statistics, so less uncertainty in your estimate

  22. Sampling Distribution • A sampling distributionis the distribution of statistics computed for different samples of the same size taken from the same population • The sampling distribution shows us how the statistic varies from sample to sample • This gives us an idea for the uncertainty surrounding the estimate of a parameter

  23. Random Samples • If you take random samples, the sampling distribution will be centered around the true population parameter • If sampling bias exists (if you do not take random samples), your sampling distribution may give you bad information about the true parameter

  24. Lincoln’s Gettysburg Address

  25. Confidence Interval • A confidence intervalfor a parameter is an interval computed from sample data by a method that will capture the parameter for a specified proportion of all samples • The success rate (the proportion of all samples whose intervals contain the parameter) is known as the confidence level • A 95% confidence interval will contain the true parameter for 95% of all samples

  26. Confidence Intervals http://bcs.whfreeman.com/ips4e/cat_010/applets/confidenceinterval.html Sampling Distribution Parameter • The parameter is fixed • The statistic is random (depends on the sample) • The interval is random (depends on the sample)

  27. Sampling Distribution • If you had access to the sampling distribution, how would you find the margin of error to ensure that intervals of the form • would capture the parameter for 95% of all samples?

  28. Standard Error • The standard error (SE) of a statistic is the standard deviation of the sample statistic • A 95% confidence interval can be created by http://bcs.whfreeman.com/ips4e/cat_010/applets/confidenceinterval.html

  29. Economy • A recent survey of 1,502 Americans in January 2012 found that 86% consider the economy a “top priority” for the president and congress this year. • The standard error for this statistic is 0.01. • What is the 95% confidence interval for the true proportion of all Americans that consider the economy a “top priority” for the president and congress this year? • (a) (0.85, 0.87) • (b) (0.84, 0.88) • (c) (0.82, 0.90) http://www.people-press.org/2012/01/23/public-priorities-deficit-rising-terrorism-slipping/

  30. Summary • To create a plausible range of values for a parameter: • Take many random samples from the population, and compute the sample statistic for each sample • Compute the standard error as the standard deviation of all these statistics • Use statistic  2SE • One small problem…

  31. Reality • … WE ONLY HAVE ONE SAMPLE!!!! • How do we know how much sample statistics vary, if we only have one sample?!? • … to be continued

  32. Project 1 • Pose a question that you would like to investigate. If possible, choose something related to your major! • Find or collect data that will help you answer this question (you may need to edit your question based on available data) • If using existing data, you have to find your own (do not use a dataset already used in this class) • If collecting data, wait until your proposal has been approved to collect the data • You can choose either a single variable or a relationship between two variables

  33. Project 1 • The result will be a five page paper including • Description of the data collection method, and the implications this has for statistical inference • Descriptive statistics (summary stats, visualization) • Confidence intervals • Hypothesis testing (following week) • Distribution-based inference (after Exam 1) • Proposal due 2/15 • Can submit earlier if want feedback sooner • Include data if you are using existing data • If collecting your own data, proposal should include a detailed data collection plan

  34. To Do • Homework 2 (due Monday) • Idea and data for Project 1 (proposal due 2/15)

  35. FINDING DATA http://library.duke.edu/data/ Joel Herndon

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