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Population and Sampling

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Title: Population and Sampling


1
Population and Sampling
  • AED 616
  • Spring 2007

2
What is a Population?
  • In Social Science research, the investigator
    seeks to obtain data from a specific source.
  • In survey research, the target group is referred
    to as the population.
  • The population has certain characteristics of
    interest to the researcher.
  • When we gather data from an entire population, it
    is referred to as a census.

3
Limiting Factors
  • What happens when a population is very large?
  • Example of a population all students enrolled
    at the University of Arizona
  • Another example of a population all high school
    students enrolled in agricultural education
    programs in Arizona
  • A manageable population might be all
    agricultural education teachers in Arizona.

4
Limiting Factors (continued)
  • When dealing with populations, the statistical
    representation is the upper case letter N.
  • What happens when the population is too large for
    the researcher to deal with?
  • Two limiting factors of conducting research are
  • Time
  • Funding
  • A M.S. student may not have the time to complete
    a research project with a population of 500
    1,000 people.

5
Solution?
  • When the population is too large, the researcher
    can sample the population.
  • A sample is a subset of the population to which
    the researcher wants the sample, or the
    individuals actually involved in the research, to
    be representative of the population.
  • Selecting a random sample ensures
    representativeness from a mathematical
    perspective.
  • Sometimes, it is not possible to select random
    samples for all possible education research
    studies so, at times, purposeful samples are
    used.
  • A sample either is or is not random.
  • Random sampling must incorporate some aspect of
    random selection.

6
Random Sampling
  • A random sample involves what is called
    probability sampling.
  • Every member of the population has a nonzero
    probability of being selected for the sample.
  • A random sample is an unbiased sample, which
    means that those individuals selected vary only
    as they would due to random fluctuation.

7
Random Selection vs Random Assignment
  • A researcher at the UA selects a random sample
    of 250 from the freshman class of 6,821 students
    who are then surveyed about their attitudes
    toward certain factors of college life.
  • This example involves random selection. The 250
    students of the sample are representative of the
    6,821 in the freshman class.

8
  • An Ag Ed researcher is conducting an experiment
    on the use of hearing protection devices by
    agricultural educators in shops and labs.
  • 80 teachers are participating in the research and
    20 will be randomly assigned to each type of
    hearing protection group.
  • In this way, the four groups of teachers assigned
    to the different hearing protection device vary
    only on a random basis.
  • As teachers are assigned, any teacher has the
    same probability of being assigned to any one of
    the four hearing protection device groups.
  • Mainly, one in four, or one-quarter.

9
Use of a Random Number Table
  • A simple random sample can be obtained by using a
    table of random numbers.
  • Each member of a finite population is assigned a
    number, and then as many numbers as comprise the
    sample size are selected from the table.
  • If there is a population of 70 members and 10 are
    to be selected at random, each of the 70 members
    is assigned a number from 1 to 70.
  • The first 10 numbers that appear, wherever one
    begins in the random number table, determine the
    10 sample members.
  • As there are only 70 members in the population,
    two-digit random numbers are used.
  • Looking at an example table
  • Beginning with the first row and going across,
    taking two-digit numbers in sequence gives the
    following 10 numbers
  • 59, 39, 15, 80 (ignored, too high a number), 30,
    52, 09, 88 (ignored), 27, 18, 87 (ignored), 02,
    and 48.
  • A number that is greater than your highest number
    (i.e.70) is ignored, as well as numbers that are
    repeated because a single member of the
    population is not included twice in the sample.
  • Any kind of sequencing in the table is random.
  • Not necessary to go across rows.
  • Numbers could be selected in columns or by
    blocks.
  • Random number generators are available on-line.

10
Sampling Error and Sampling Bias
  • Sampling error is associated with random sampling
    and the term error does not mean making a
    mistake.
  • Suppose we have a population of 1,675 fifth
    graders and we select a random sample of 150 from
    this population.
  • The sample is administered a science achievement
    test and mean score on the test is 86.3
  • Could it be said that the mean of the population
    is 86.3?
  • No, but we are confident that the mean is a value
    around 86.3
  • The difference between the sample mean of 86.3
    and the population mean (what ever it is) is an
    example of sampling error.
  • Sampling error is related to variation.
  • Sampling error is variation due o random
    fluctuation.
  • As sample size increases, the variation due to
    random fluctuation and sampling error decreases.

11
  • Bias enters in when a sample fails to represent
    the population is was intended to represent.
  • Bias can be due to any number of sources, and it
    is a threat whenever nonrandom (or non
    probability) sampling is used, or when random
    sampling is used with a bias source.
  • Referring to the fifth-grade population once more.

12
  • Suppose instead of selecting a random sample, we
    selected five classes of fifth-graders, each
    class form a different school.
  • Class average 30 students per class, so again
    have 105 students in the sample.
  • But the classes selected are high-ability classes
    within the schools
  • For this sample the mean on the science
    achievement test is 103.8.
  • Does this mean represent the science achievement
    of the population?
  • Sampling bias has occurred and this is a biased
    sample because of the way in which the sample was
    selected, in this case a nonrandom manner.

13
  • Though random sampling was used, sampling bias
    can occur if we have a biased source.
  • A most commonly cited survey in which a biased
    source was used was the 1936 survey by the
    Literary Digest.
  • Predicted that Alf Landon would win the
    presidential election over Franklin Roosevelt
  • Random sampling was used but the sample selected
    primarily from telephone directories and
    automobile registrations lists.
  • In 1936, these lists were not representative of
    the voting population.
  • Suppose you wanted to select a sample of the
    general population of U.S. adults.
  • Country club memberships lists are used for the
    source and a random sample is selected from the
    list.
  • Any problems?

14
Criteria for Sampling Design
  • A good sampling design should meet four criteria
  • Goal orientation. The sampling design should be
    tailored to the research design and be based on
    the studys goals and objectives.
  • Measurability. Sampling design provides the data
    for the necessary analyses.
  • Practicality. The actual activities of applying
    the sampling design have been identified and are
    feasible in the real situation.
  • Economy. Research objectives can be met with
    available resources time, financial, personnel.

15
Stratified Random Sampling
  • In some cases, a population may contain several
    sub populations.
  • The researcher might divide the population into
    two or more subpopulations called strata.
  • All strata are represented in the sample, and the
    sample members are selected from each stratum at
    random.
  • Equal allocation
  • Proportional allocation

16
Example
  • Director of institutional research is conducting
    a survey of student opinion on the adequacy of
    facilities.
  • Selects a 5 stratified random sample.
  • University contains seven colleges, with a total
    enrollment of 15, 823 students.
  • College is the stratifying variable, proportional
    allocation is used.
  • 5 sample selected, sampling fraction is 1/20, .05

17
Sample Selection Using Proportional Allocation
University Example
18
What are other examples of strata that you can
think of?
19
Cluster Sampling
  • Involves the random selection of clusters from
    the larger population of clusters.
  • All the population members of a selected cluster
    are included in the sample.
  • Classrooms are examples of cluster sampling.
  • Clusters from the sample are randomly selected
    from the larger population of clusters.

20
Cluster Example
  • Survey of fourth-grade achievement in
    mathematics, using a standardized achievement
    test.
  • School system contains 33 elementary schools.
  • Too expensive to administer test to all
    fourth-graders in the system.
  • Classes are naturally assembled.
  • All students in a class are selected
  • If there are 83 fourth grade classes in the
    system, an average enrollment of 27 students.
  • A sample size of 550 is desired.
  • Decided to select 20 classes or clusters.
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