1 / 25

Chapter 12

Chapter 12. Sample Surveys. Idea 1: Take a Sample. Examine a part of the whole. Population. Sample. Idea 1: Take a Sample. Population Group of people we want information from Examples: Registered voters in US ISU undergraduates Generally large

brooklyn
Download Presentation

Chapter 12

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Chapter 12 Sample Surveys

  2. Idea 1: Take a Sample • Examine a part of the whole. Population Sample

  3. Idea 1: Take a Sample • Population • Group of people we want information from • Examples: • Registered voters in US • ISU undergraduates • Generally large • Impractical or too expensive to talk to everyone

  4. Idea 1: Take a Sample • Sample • Smaller group of people from population • Examples: • 200 registered voters • 100 ISU undergrads • Group we get information from

  5. Properties of a Sample • Would like the sample to be representative of the population. • This may not be possible, but at least we would like a sample that is not biased.

  6. Idea 2: Select the Sample Randomly • Controls for factors that you know in the data • Examples: Gender, Race, Religion, etc. • Controls for factors you don’t know in data • Allows you to make inferences about Population • The point of Statistics • Without random selection, your sample does not tell you anything about population • Selecting items for the sample should be done at random so as to reduce the chance of getting a biased sample.

  7. Idea 3: Sample Size Matters • Size of sample matters • Fraction of the population sampled is not important! • Want sample to be fairly large • Why not do a census? • Impractical • Expensive • Difficult to do • Populations are often dynamic • Can be more complex

  8. Terminology • Information (what do we want to know?) • Examples: • Percent of Registered Voters that would vote for a candidate. • Mean age of ISU undergraduates • Population • Parameter • Percent of all registered voters that will vote for a candidate • Mean age of all ISU undergrads • Sample • Statistic • Percent of the sample that will vote for a candidate • Mean age of sample

  9. Terminology • Population: All students at ISU. • Question: Are the hours the Park’s Library is open convenient? • Population parameter: Proportion of all ISU students who would answer yes. • Sample: 400 ISU students. • Sample statistic: the proportion of the 400 students in the sample who say yes.

  10. Parameters and Statistics • Most common parameters and statistics

  11. How do we select the 400? • Put an ad in the ISU Daily with the question and ask students to drop off their answers. • Stand in front of the library and ask the first 400 students who come by.

  12. Simple Random Sample • Want a representative sample but will settle for one that is not biased. • SRS – Each combination of 400 ISU students has the same chance of being the sample selected.

  13. Simple Random Sample • Sampling Frame • A list of all students at ISU (the Registrar has such a list) • Use random numbers to select 400 students at random from this list.

  14. Simple Random Sample • If one were to do this more than once • Different random numbers will give different samples of 400 students. • We have introduced variability by sampling!

  15. Stratified Random Sample • Large population will be made up of smaller homogenous groups • Make sure each group is included in sample • Usually in proportion of population • Divide population into groups • Take SRS from each group • Combine SRSs = Stratified Random Sample

  16. Example – Stratified Sample • Population – 200 employees at a company; 120 are men and 80 are women • Opinions on policy of arrival of children • Sample 20 people • Stratify into men and women • Sample 12 men and 8 women

  17. Cluster Sampling • Difficult to get sampling frame for large population • Sample group or cluster first • Then take SRS from each cluster • Combined SRSs = Cluster Sample

  18. Example – Cluster Sample • Opinion of Catholics church goers in Boston • Cluster = Catholic churches • Take SRS of churches • Take SRS of members of selected churches

  19. Systematic Sampling • Use a system to select the sample • Every 10th person on an alphabetical list of students • OK if the order of the list is not going to be associated with the responses • Must start a systematic sample randomly (randomly choose where to start on the list)

  20. Sampling Variability • Take several samples from a population and compute a statistic (i.e. mean) • These means will not be the same • This is the natural tendency of randomly drawn samples to vary from trial to trial • Sometimes called sampling error, but it is not an error; just a natural tendency

  21. What Can Go Wrong? • Bias – any systematic failure of a sample to represent its population • Biased Samples • Voluntary Response Sampling • A large group of people are invited to respond, and those who do respond are counted • Problem: Not representative of pop - those with very strong opinions on subject are most likely to respond. • This is called voluntary response bias

  22. What Can Go Wrong? • More Biased Samples • Convenience Sampling • This approach simply includes those at hand, or easily available • Problem: Not representative of population

  23. Cautions about Samples • Undercoverage – Missing part of the population • Household Surveys • Phone Surveys • Avoid undercoverage by having an accurate and complete sampling frame • Non-response bias – People elect not to participate in survey.

  24. Cautions about Samples • Response bias – People will lie • Illegal or unpopular behavior • Leading questions from interviewer • Faulty memory • Wording of questions • Confusing wording, i.e., use of double negatives • Leading questions

  25. Inference about Population • Biased samples tell us nothing about the population • Good samples have sampling variability • Statistics will be different for each sample • Statistics will be different for population paramters • These differences obey certain laws of probability, but only for random samples • Larger samples give more accurate results

More Related