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Sampling Fundamentals

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Title: Sampling Fundamentals


1
Sampling Fundamentals
2
Basic Concepts
  • Population the entire group under study (or of
    interest)
  • Exercise Define population for a study seeking
    to assess SUU student attitudes towards a)
    program quality and delivery, b) program content,
    and c) social environment.
  • Sample subset of the population
  • Used to represent the population
  • Sample unit (elements) basic unit investigated
    (choose sampling units/elements when sampling)
  • Individuals, households, etc.
  • Census data collected from EVERYONE in population

3
Basic Concepts (continued)
  • AGAIN total error sampling error nonsampling
    error
  • Sampling error error due to taking a sample
    (/-zs)
  • Nonsampling error everything else (measurement,
    data analysis, etc.)
  • Sample frame list from which the sample is
    selected
  • Sample frame error Popn members not in frame,
    and members in frame not in popn of interest

4
Reasons for Sampling
  • Cost
  • Too much information to handle
  • Sampling can be more accurate
  • Nonsampling errors can overwhelm reduction in
    sampling errors
  • Sampling work behaviors example
  • Census Bureau
  • Time problem

5
Developing a sampling plana
  • 1. Define the population of interest.
  • 2. Choose a data-collection method (mail,
    telephone, Internet, intercept, etc.).
  • 3. Identify a sampling frame.
  • 4. Select sampling method
  • 5. Determine sample size.
  • 6. Develop operational procedures for selecting
    sampling elements/units.
  • 7. Execute the operational sampling plan.

6
PROBABILITY SAMPLING METHODS
  • Each member of population has a known
    probability of being selected
  • Simple Random Sampling Each member has an equal
    probability of being selected
  • Blind Draw Method
  • Table of Random Numbers
  • Useful for small samples, when Random Digit
    Dialing (or 1) is appropriate, and computerized
    lists

7
PROBABILITY METHODS (Contd)
  • Stratified Sampling Population is segmented
    (stratified), and then samples are chosen from
    each strata using some other method
  • Can be more efficient (smaller sampling error)
  • Homogeneous within, heterogeneous without
  • Useful when interested in different strata (e.g.,
    small numbers, etc)
  • Disproportionate versus proportionate

8
PROBABILITY METHODS (Contd)
  • Cluster Sampling Population is divided into
    groups, or clusters, and then clusters are
    randomly chosen.
  • Homogenous without, heterogeneous within
  • Every unit in cluster examined, OR
  • A Random (or systematic) sample is taken from
    chosen cluster (2-stage or 2-step approach)
  • Careful with the probabilities!

9
PROBABILITY METHODS (Contd)
  • Systematic Sampling Randomly choosing a starting
    point and then choosing every nth member.
  • Example Need 52 data points (daily sales) for a
    year
  • Skip interval 365/527.01
  • Randomly choose 1 day out of first 7, then choose
    every 7th one after that.
  • Variation Choose every nth visitor

10
NONPROBABILITY SAMPLING METHODS
  • Probability of selection not known, and hence
    representativeness cannot be assessed
  • Technically, confidence intervals, H0 tests, etc.
    not appropriate
  • Convenience Samples
  • Shopping mall intercepts, classes asked to fill
    out questionnaires, etc.
  • Judgment Samples Someone puts together what is
    believed to be a relatively representative sample
  • Ex. Test markets

11
Nonprobability Sampling (Contd)
  • Referral (or Snowball) Samples
  • Quota Samples
  • EXAMPLE Choose sampling units so their
    representation equals their frequency in the
    popn (e.g., 52 females, 48 males)

12
Identifying the Target Population
Reconciling the Population, Sampling Frame
Differences
Determining the Sampling Frame
Selecting a Sampling Frame
Probability Sampling
Non-Probability Sampling
The Sampling Process
Determining the Relevant Sample Size
Execute Sampling
Data Collection From Respondents
Handling the Non-Response Problem
Information for Decision-Making
13
Nonresponse Bias
  • Reason for nonresponse
  • Refusal
  • Lack of ability to respond
  • Not at home
  • Inaccessible
  • Handling nonresponse
  • Improve research design
  • Call-backs
  • Estimate effects
  • Sample nonrespondents trends
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