Transcript Sampling
Sampling
ADV 3500 Fall 2007
Chunsik Lee
Sample vs. Population
A sample is some part of a larger body
specifically selected to represent the whole.
Sampling is the process by which this part is
chosen.
Sample vs. Census
Why do we take a sample rather than a
complete census?
For efficiency and generalization
Sampling methods &
procedures
The sampling process:
Define the population (clear & tangible
characteristics)
Determine sampling method
Specify the sampling frame
Determine sample size
Select the sample
Sampling methods &
procedures
Two types of sampling procedures
Probability sampling
We can specify the probability or likelihood that
a given element of the population will be
included in the sample.
Non-probability sampling
We cannot specify the likelihood that a given
element from the population will be included in
the sample.
Characteristics of probability
samples
Always involves chance selection of the
elements for inclusion in the sample.
Each element will have a non-zero chance of
selection.
Only with a probability sample can we
estimate the likelihood that a sample will
represent the population.
We can estimate the error associated with
the sample.
Characteristics of nonprobability samples
We have no assurance that every element of
the population has a chance to be included.
We do not have the ability to estimate the
error associated with the sample drawn.
Types of probability sampling
Simple random sampling
Systematic random sampling
Stratified sampling
Probability sampling
Simple random sampling
Every element in the population will have an
equal chance of being selected.
Tables of random number or computer
generated random numbers are used.
Probability sampling
Systematic random sampling
Initial starting point is selected randomly,
then every nth number on the list is selected.
Example:
You wish to take a sample of 1,000 from a list
consisting of 200,000 names. Using
systematic selection, every 200th name from
the list will be drawn.
-- sampling interval = 200
-- 200,000/1,000 = 200
Probability sampling
Stratified sampling
Break population into groups or strata and
then take random sample within each group.
Treat each stratum as a separate
subpopulation for sampling purposes.
Strata are homogeneous within and
heterogeneous between (or maximally
different from each other).
Probability sampling
Stratified sampling
Proportionate stratified random sampling is
done in proportion to the group’s
representation in the population
Disproportionate stratified random sampling
is a means of weighting a group’s
representation in a sample to accommodate
broader research objectives
Types of non-probability
sampling
Convenience sampling
Judgment (Purposive) sampling
Quota sampling
Snowball sampling
Non-probability sampling
Convenience sampling
Take what is available.
Used in exploratory situations or nongeneralization research (e.g., experimental
research)
Non-probability sampling
Judgment (Purposive) sampling
Choose people to achieve a specific analytical
objective, typically to make certain that
there are sufficient numbers of elements.
But, doesn’t consider characteristics of the
target population.
Non-probability sampling
Quota sampling
Selected purposively in such a way that the
characteristics of interest are “represented”
in the sample in the same proportion as they
are in the population.
Non-probability sampling
Snowball sampling
Subsequent respondents are obtained through
initial respondent referrals.
Used to locate rare populations by referrals.