What are some types of sampling bias?
Sampling bias occurs when the sample collected for a study systematically differs from the target population. Below are some common types of sampling bias:
- Self-selection bias: People who choose to participate in a study differ from the general population in an important way (e.g., motivation, interest).
- Nonresponse bias: Those who are unable or unwilling to respond often share key characteristics, and their absence may skew results.
- Healthy user bias: Individuals who are able or willing to participate are often healthier or more health-conscious than nonparticipants.
- Survivorship bias: Data are only available for individuals or outcomes that pass a certain filter (e.g., those who survive an event); those that didn’t are ignored.
- Undercoverage bias: Certain subgroups are systematically excluded from the sample, leading to skewed representation.
- Prescreening bias: Eligibility criteria (e.g., age, language) may unintentionally exclude relevant parts of the population.
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