Sample
Sampling is the process of selecting units (e.g., people, organizations, time periods) from a population of interest, studying these in greater detail and then drawing conclusions about the larger population to study them in greater detail.
Methods
Consider why you want to study your population of interest and what you want to do with the information that you have gathered, before you choose your method.
There are three clusters of sampling options: Probability; Purposive (or Purposeful); and Convenience.
Probability
Probability sampling methods use random or quasi-random methods to select the sample, and then use statistical generalization to draw inferences about that population. To minimize bias, these methods have specific rules on selection of the sampling frame, size of the sample, and managing variation within the sample. The methods include:
- Multi-stage: cluster sampling in which larger clusters are further subdivided into smaller, more targeted groupings for the purposes of surveying.
- Sequential: selecting every nth case from a list (e.g. every 10th client)
- Simple random: drawing a sample from the population completely at random.
- Stratified random: splitting the population into strata (sections or segments) in order to ensure distinct categories are adequately represented before selecting a random sample from each.
Purposive (or Purposeful)
Purposive sampling methods study information-rich cases from a given population to make analytical inferences about the population. Units are selected based on one or more predetermined characteristics and the sample size can be as small as one (n=1). To minimize bias, this cluster of methods encourages transparency in case selection, triangulation, and seeking out of disconfirming evidence. The methods are:
- Confirming and disconfirming: cases that match existing patterns (to explore them) and those that don’t match (to test them).
- Criterion: cases that meet a particular condition
- Critical case: a case of particular importance, or that can make a strong point
- Homogenous: cases that are very similar to each other.
- Intensity: selecting cases which exhibit a particular phenomenon intensely.
- Maximum variation: contains cases that are as different from each other as possible.
- Outlier: analysing cases that are unusual or special in some way, such as outstanding successes or notable failures.
- Snowball: asking initial informants to identify additional informants, creating a snowball effect as the sample gets bigger and bigger
- Theory-based: selecting cases according to the extent to which they represent a particular theoretical construct.
- Typical case: developing a profile of what is agreed as average, or normal.
Convenience
Convenience sampling is a cluster of methods that use samples which are readily available and which may not allow credible inference about the population. Convenience methods are:
- Convenience: based on the ease or "convenience" of gaining access to a sample. simply in which data is gathered from people who are readily available.
- Volunteer: sampling by simply asking for volunteers
Resources
Probability
Purposive
Sources
M. Q. Patton (2001 ) Qualitative Research and Evaluation Methods (3rd edition). Thousand Oaks, CA: Sage Publications.
Expand to view all resources related to 'Sample'
Resource
- 6: Sample size and power calculations
- Designing and conducting health systems research projects: Sampling
- FAO: Sampling in marketing research
- Sampling
- Sampling for surveys: Clustered random sampling
- Sampling for surveys: Sample size calculations
- Sampling for surveys: Simple random sampling
- Sampling for surveys: Stratified random sampling
'Sample' is referenced in:
Approach
Blog
Framework/Guide
- Communication for Development (C4D) :
Method
Theme