A systematic error introduced when your research sample does not represent the population you are trying to study. The most common and most overlooked threat to research validity.
Definition: A systematic error introduced when your research sample does not represent the population you are trying to study. The most common and most overlooked threat to research validity.
Sampling bias occurs when the people in your study differ systematically from the people you are trying to understand. Your findings describe your sample accurately—but your sample does not describe your target population.
You cannot fully eliminate sampling bias, but you can reduce it:
The biggest risk is not having sampling bias—it is pretending you do not.
Systematic deviation from the true value in research findings. Cannot be eliminated, only managed through standardization and awareness. The goal is systematic bias (manageable) over unsystematic bias (chaos).
Finding and enrolling qualified participants for a research study. The single biggest bottleneck in applied research—and the one most teams underestimate.
The process of evaluating potential research participants against eligibility criteria before they enter a study. Good screening protects data quality; bad screening wastes everyone's time.