What is the difference between sampling bias and selection bias?
There’s not a universally agreed-upon distinction between sampling bias and selection bias, but sampling bias is often considered a subtype of selection bias.
Sampling bias occurs when a sample is not random (i.e., it differs from the target population). It impacts external validity—how well the results generalize from the sample to the population.
Selection bias, on the other hand, refers more broadly to bias introduced when selecting who to include in a study. It impacts internal validity—whether your results can be explained by the independent variable you manipulated (and not by other confounds).
The distinction between sampling and selection bias is complex. AI tools like QuillBot’s Paraphrasing Tool can be helpful when trying to parse difficult concepts.