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7: The Logic of Sampling. Introduction Nobody can observe everything Critical to decide what to observe Sampling –Process of selecting observations Probability.

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Presentation on theme: "7: The Logic of Sampling. Introduction Nobody can observe everything Critical to decide what to observe Sampling –Process of selecting observations Probability."— Presentation transcript:

1 7: The Logic of Sampling

2 Introduction Nobody can observe everything Critical to decide what to observe Sampling –Process of selecting observations Probability sampling vs. nonprobability sampling

3 History of Sampling Developed hand in hand with political polling 1936: Literary Digest poll –10 million ballots were sent to people in telephone directories and automobile owner lists –2 million responded: 57% for Alf Landon, 43% for FDR –Actual results: 61% for FDR

4 Nonprobability Sampling Used when probability samples can’t be selected Four types: 1.Reliance on available subjects 2.Purposive or judgmental sampling 3.Snowball sampling 4.Quota sampling

5 Reliance on Available Subjects Extremely risky - be cautious in generalizing Used frequently Justified if: –Want to study people passing the sampling point at a specified time –Less risky methods are not feasible

6 Purposive or Judgmental Sampling May be appropriate to select sample based on judgment and purpose of study Used for pretests Used to study a small subset of a larger population Used to study deviant cases

7 Snowball Sampling Accidental sampling Common in qualitative field research Appropriate when members of special populations are hard to locate Collect data on a few members and then ask if they know others Used primarily for exploratory purposes

8 Quota Sampling Addresses the issue of representativeness Matrix- describe characteristics of population Collect data from people having characteristics of a given cell Several problems –Quota frame must be accurate –Biases may exist

9 Selecting Informants Respondents –People who provide information about themselves Informants –Members of the group who can talk directly about the group Select informants who are typical of the groups

10 The Logic of Probability Sampling If everyone was the same… But humans are quite different Sample must contain same variations that exist in the population Isn’t that simple and there are ways researchers mess up

11 Conscious and Unconscious Sampling Bias What happens when you select people who are convenient for study? Personal leanings may affect the sample –May consciously or unconsciously avoid interviewing certain people Bias –Those selected are not “typical” or “representative” of the larger population

12 Representativeness and Probability of Selection Sample is representative if… Samples don’t have to be representative in all respects: just to those characteristics relevant to the study EPSEM Seldom perfectly represent the population Two advantages of probability sampling 1.More representative 2.Permits us to estimate the accuracy of the sample

13 Probability Sampling Theory The ultimate purpose of sampling Probability sampling enhances likelihood Random selection

14 Sampling Distribution

15 Sample size = 1

16 Sampling Distribution Sample size = 2

17 Sampling Distribution Sample size = 3 & 4

18 Sampling Distribution Sample size = 5 & 6

19 Sampling Distribution

20

21 s= P x Q n Contains 3 factors: 1.The population parameters (P & Q) 2.The sample size (n) 3.The standard error (s)

22 Sampling Distribution

23 Populations and Sampling Frames Less than perfect conditions exist in the field for sampling Sampling frame Where can you get a list? Omissions are inevitable

24 Types of Sampling Designs Seldom choose simple random sampling Two reasons 1.Not feasible 2.May not be most accurate method

25 Simple Random Sampling Basic sampling method Single number is assigned Table of random numbers or computer program

26 Systematic Sampling Every kth element is chosen First element selected at random –Systematic sample with a random start Sampling interval Sampling ratio Virtually identical to SRS Pay attention to the arrangement of elements in the list

27 Stratified Sampling Modification of two previous methods Obtain a greater degree of representativeness Homogeneous subsets Select number from each Two methods of stratification 1.Sort into groups, select based on proportion of population 2.Put groups in continuous list, select systematic sample

28 Multistage Cluster Sampling Lists may not be available Listing and sampling Makes impossible studies possible Highly efficient but less accurate sample –Two sampling errors Stratification can be used Probability proportionate to size (PPS) Disproportionate sampling and weighting

29 Probability Sampling in Review Most effective method for the selection of study elements Avoids biases Permits estimates of sampling error


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