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The Logic of Sampling. Key Sampling Concepts Sampling (two types) Element Population Sample Sampling Frame Representative Sample.

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Presentation on theme: "The Logic of Sampling. Key Sampling Concepts Sampling (two types) Element Population Sample Sampling Frame Representative Sample."— Presentation transcript:

1 The Logic of Sampling

2 Key Sampling Concepts Sampling (two types) Element Population Sample Sampling Frame Representative Sample

3 Application of Sampling Terms

4 Types of Samples Probability -- Strictly following two rules. Non Probability -- Failing to follow the two rules

5 Types of Probability Samples Simple Random Sample (SRS) Systematic Random Sample Stratified Random Sample Cluster Sample

6 Simple Random Sample Every element has an equal chance of selection No element can be selected more than once

7 Example of a good random sample outcome

8 Simple Random Sample Every element has an equal chance of selection No element can be selected more than once

9 Systematic Random Sample Sampling Frame Nth Element A simple random sample employing a sample frame.

10 Stratified Random Sample

11 Cluster Sample

12 Non probability samples Convenience (available to researcher) Snowball (available connections) Quota (stratified without randomness) Informant (case study/social history) Focus Groups

13 What’s the difference? How important is the difference? Probability samples can be generalized to a population; while non-probability samples cannot. Non-probability offer an in depth understanding and are most often: “I don’t know what I am seeking until after I find it.” Following is an illustration:

14 Overview of Sample Problems Hite, S. (1987). Women in Love: A Cultural Revolution in Progress. NY: Alfred A. Knopf. Laumann, E. O., Gagnon, J. H., Michael, R. T. & Michaels, S. (1994). The Social Organization of Sexuality: Sexual Practices in the United States. Chicago: University of Chicago Press.

15 Sample Size Selection The problem with the following formula: It is calibrated for dichotomous data. The sample size will increase with the number of options given to the subject.

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18 Do NOT Forget!!!! Regardless of what formula one uses, always increase the sample size by 20%.

19 Excel RANDBETWEEN – Returns a random number between the numbers you specify. RAND – Returns a random number greater than or equal to 0 and less than 1, evenly distributed (changes on recalculation).


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