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Sampling

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Title: Sampling


1
Sampling
2
Definition
  • Sampling the process of selecting a number of
    individuals for a study in such a way that they
    represent the larger group from which they were
    selected.

3
Example
  • What is the opinion of 5,000 teachers on unions?
  • Would take 1,250 hours to interview all of the
    teachers
  • 125 hours to interview 10 or 500 teachers
  • Possibly the same results in less time
  • Note must acknowledge biases when selecting the
    group for study

4
Definition of a Population
  • Population the group of interest to the
    researcher
  • the group to which she or he would like the
    results of the study to be generalized
  • Generalizability the extent to which the results
    of one study can be applied to other populations
    or situations

5
Examples of a Population
  • All 10th graders in the US
  • All elementary school gifted children in Utah
  • All 1st grade physically disabled students in
    Utopia Country who have participated in preschool
    training

6
Two Important Points About Populations
  • Populations may be virtually any size and may
    cover almost any geographic area
  • The entire group the researcher would really like
    to generalize to is rarely available

7
Two Types of Populations
  • Target population the population that the
    researcher would like to generalize
  • available population the population that the
    researcher can realistically select from

8
Example
  • High school principals opinion on a six day
    school week
  • Cant interview all of the nations principals
  • Cant interview even a sample of the nations
    principals (still to big)
  • Maybe, sample in your own state

9
Describe the Characteristics of Your Sample
  • Include in your description
  • Number of participants
  • Demographic of the sample

10
Selecting a Random Sample
11
Elements of a Good Sample
  • Meaningfulness of the study
  • Generalizability of the results

12
3 Steps to Sampling
  • Identify the population
  • Determine the required sample size
  • Select the sample

13
Probability Sampling Techniques
  • Simple Random Sampling
  • Stratified Sampling
  • Cluster Sampling
  • Systematic Sampling

14
Simple Random Sampling
15
Definition
  • The process of selecting a sample in such a way
    that all individuals in the defined population
    have an equal and independent chance of being
    selected for the sample

16
Advantages of Random Sampling
  • Least amount of human interference in selecting
    the sample
  • Therefore best way to obtain a representative
    sample

17
Table of Random Number
  • A list of randomly picked 5 digit numbers
  • Found in Table A.1 in the Appendix

18
Steps in Simple Random Sampling
  • 1. Identify and define the population
  • 2. Determine the desired sample size
  • 3. List all members of the population
  • 4. Assign all individuals on the list a
    consecutive number from zero to the required
    number (Each person must have the same number of
    digits)

19
Steps in Simple Random Sampling (Continued)
  • 5. Select an arbitrary number in the table of
    random numbers
  • 6. For the selected number, look at only the max
    number of digits (800 people 3 digits)

20
Steps in Simple Random Sampling (Continued)
  • 7. If the number corresponds to the number
    assigned to any of the individuals in the
    population then that individual is in the sample
    (If 801 is drawn, number doesn't count)
  • 8. Go to the next number in the column and repeat
    step 7 until the the desired number of
    individuals has been selected for the sample

21
Disadvantage of Simple Random Sampling
  • May not always be a completely even split of
    participants
  • Click here to return to Probability Sampling
    Techniques

22
Stratified Sampling
23
Definition
  • The process of selecting a sample in such a way
    that identified subgroups in the population are
    represented in the sample in the same proportion
    that they exist in the population

24
Example
  • Survey of a national election (before the
    election) to determine the most likely winner

25
Equal Sized Samples
  • Used to compare the performance of different
    subgroups
  • Selection is from subgroups in the population
    rather than the population as a whole

26
Example of Equal Sized Samples
  • Study of two different teaching methods
  • Must have equal numbers of low, average, and high
    ability students in each sample before you split
    the groups with the two different teaching
    methods
  • Guarantees equal representation of different
    levels of the participants in the sample

27
Steps in Equal-Sized Groups Stratified Sampling
  • 1. Identify and define the population
  • 2. Determine desired sample size
  • 3. Identify the variables and subgroups for which
    you want to guarantee appropriate, equal
    representation

28
Steps in Equal-Sized Groups Stratified Sampling
(Continued)
  • 4. Classify all members of the population as
    members of subgroups
  • 5. Randomly select an appropriate number of
    individuals from each of the subgroups

29
ExampleProportional Stratified Sampling
  • Equal representation of teachers for the question
    about unions (for more information please consult
    pages 128 and 129)
  • Click here to return to Probability Sampling
    Techniques

30
Cluster Sampling
31
  • Cluster sampling is when groups not individuals
    are randomly selected.
  • Clusters can be communities, states, school
    districts, and so on.

32
  • The steps in cluster sampling are similar to
    those in random sampling, except the random
    selection of groups is involved, not individuals.

33
  • Both stratified and cluster sampling often use
    multi-stage sampling.

34
Systematic Sampling
35
  • Systematic sampling is sampling in which
    individuals are taken from a list by taking every
    Kth name, where K equals the number of people on
    the list divided by the number of participants
    desired for the sample.

36
Determining Sample Size
  • Samples should be as large as possible in
    general, the larger the sample, the more
    representative it is likely to be, and the more
    generalizable the results of the study will be.

37
  • Minimum, acceptable sample sizes depend on the
    type of research, but there are no universally
    accepted minimum sample sizes.

38
Avoiding Sampling Error and Bias
  • Sampling error is beyond the control of the
    researcher and occurs as part of random selection
    procedures.

39
  • Sampling bias is systematic and is generally the
    fault of the researcher.
  • Bias can result in research findings
  • being invalid.
  • A major source of bias is the use of nonrandom
    sampling techniques.

40
Selecting a Nonrandom Sample
  • Researchers cannot always select random samples
    and occasionally must rely on nonrandom selection
    procedures.

41
  • When nonrandom sampling techniques are used, it
    is not possible to specify what probability each
    member of a population has of being selected for
    the sample and it is often difficult to even
    describe the population from which a sample was
    drawn and to whom results can be generalized.

42
  • Three types of nonrandom sampling are convenience
    sampling, which involves using as the sample
    whoever happens to be available
  • purposive sampling, which involves selecting a
    sample the researcher believes to be
    representative of a given population
  • and quota sampling, which involves giving
    interviewers exact numbers, or quotas, of persons
    of varying characteristics who are to be
    interviewed.

43
  • Any sampling bias present in a study should be
    fully described in the final research report.

44
Qualitative Sampling Definition and Purpose
  • Qualitative research most often deals with small,
    purposive samples. The researcher's insights
    guide the selection of participants.

45
  • A variety of purposive sampling approaches are
    used in qualitative research, including intensity
    sampling, homogeneous sampling, criterion
    sampling, snowball sampling, and random
    purposive sampling.

46
  • The use of purposive sampling requires that the
    researcher describe in detail the methods used to
    select a sample.
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