12 – Sampling
Why Should I Care?
A bad sample will kill your scientific power. That’s all there is to it.
Definitions
Population: A set of observable objects, which could be individuals, groups, documents, organizations, etc. that you are interested in studying.
Sample: Groups of objects, taken from a population, that are studied on behalf of the population. Will be used to generalize about the population.
Caveat: a warning or proviso of specific stipulations, conditions, or limitations. Especially important in the methodology section, to provide transparency, and discuss the strength of the findings. Acknowledges problems in method. (WIKI)
Deciding to Sample
1st Question: can you avoid sampling?
If n=N, best possible situation
Is it possible? Is it feasible?
Do you have enough time, resources, tools to collect data for the whole population?
A Good Sample
Generalization: To be able to use a sample finding, and assume it is accurate upon the population.
Causality: Finding the variable(s) responsible for a change in the dependent variable.
SOUP EXAMPLE Population: 2 litres of vegetable soup in a pot Sample: 1 spoonful Random Selection? No, the bottom soup may never be tasted Representative? Maybe, if you stir before you sample. Type? Non-random quota |
Types of Samples
Who should be in the sample?
The type of sample is the key to producing a research finding that is robust and credible. This applies to all disciplines and all research methods. P. 76-90
- Random Sample Generalizable
- Simple Random Sample math rule Xth
- Stratified Random Sample respect the population percentage of demographics
- Random Assignment is not Random Sampling going to caf is not random
2. Non-Random Sample NOT GENERALIZABLE
- Accidental Sample find documents or objects
- Convenience Sample going to a location where there are people
- Purposive Sample place where you know you will find XYZ people
- Quota Sample respect the population percentage of demographics
- Snowball Sample one case leads to more, and more, and more…
Size of the Sample
How big the sample? Big enough for most sorts of phenomena to be recorded
Accuracy is not generalization. This has to do with the margin of error. See QM.
Is 10 big enough of a sample to be accurate? Depends on the size of the population.
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