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Sampling-big picture

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Sampling-big picture Want to estimate a characteristic of population (population parameter). Estimate a corresponding sample statistic Sample must be representative ... – PowerPoint PPT presentation

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Title: Sampling-big picture


1
Sampling-big picture
  • Want to estimate a characteristic of population
    (population parameter).
  • Estimate a corresponding sample statistic
  • Sample must be representative of population on
    variable(s) of interest
  • Sampling error is probability of getting an
    un-representative sample by chance
  • Sample may be biased if not drawn properly

2
Sampling
  • Always define study population first
  • Use element/unit/extent/time for complete
    definition
  • element - who is interviewed
  • sampling unit - basic unit containing elements
  • extent - limit population (often spatially)
  • time - fix population in time

3
Exampleselement, unit, extent, time
  • Adults 12 and older
  • in vehicles
  • entering Yogi Bear Park
  • between July 1 and Aug 31, 1998
  • Teenagers (13-18)
  • in households
  • in Lansing, MI
  • during May 1996

4
Steps in Sampling
  • Define study population
  • Specify sampling frame and unit
  • Specify sampling method
  • Determine sample size
  • Specify sampling plan
  • Choose sample

5
Sampling methods
  • Probability vs non-probability (Does each element
    of population have known chance of being
    selected?)
  • Simple random sample or Systematic sample
    (equal probability) (choose
    every nth element)
  • Stratified vs Cluster
    Samplegroup elements and sample from groups
  • stratified choose some from every group
  • cluster only some groups sampled

6
Non-probability sampling
  • Convenience
  • Judgement
  • Purposive
  • Quota
  • Snowball

7
Prob or Non-prob Sample?
  • Project/generalize results to population - prob
  • Quantitative estimate of sampling error - prob
  • Accuracy needed relative magnitude of sampling
    vs other kinds of errors
  • Homo- or hetero-geneous population
  • Overall Costs vs benefits

8
Stratify vs Cluster
  • Stratify to ensure enough samples from subgroups
    to lower sampling error
  • Cluster primarily to reduce costs of gathering
    the data
  • Form homogeneous groups when stratifying,
    heterogeneous when clustering
  • Proportionate vs disproportionate sample
  • Stratification variables

9
Sample size
  • Based on four factors
  • Cost/budget
  • Accuracy desired
  • variance in popln on variable of interest
  • subgroup analysis planned
  • Formula n Z2 ?2 / e 2
  • n sample size
  • Z indicates confidence level (95 1.96)
  • ? standard deviation of variable in population
  • e sampling error

10
Sampling error formula
  • n Z2 ?2 / e 2
  • 1. Solve for e to express error as a function of
    sample size, confidence level, and variance
  • e (Z ?) / SQRT ( n )
  • 2. For binomial, ? sqrt (p(1-p)) , where p
    is proportion for yes in
  • the population
  • Generate numbers in binomial sampling error
    table as
  • 1.96 sqrt( p (1-p)) / sqrt (n)

11
Sampling errors for binomial (95 confidence
interval)percent distribution in population
12
Computing 95 confidence interval
  • N 100 , sample mean 46, use p 50/50,
  • sampling error from table 10
  • 95 CI is 46 or - 10 (36, 56)
  • N1,000 sample mean 22
  • sampling error from table 2.5
  • 95 CI is 22 or - 2.5 (19.5, 24.5)
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