biasdriftistä
Biasdriftistä is a term used to describe the phenomenon in which bias within data, models, or human judgments changes over time. In practice, it refers to shifts in systematic error or prejudice that occur as conditions evolve, such as changing data distributions, measurement processes, or societal norms. The phrase is commonly found in Finnish-language discussions of statistics, machine learning, and social science measurements.
Causes of bias drift include distribution shifts where predictor and outcome relationships change (covariate or concept
Implications of bias drift can be significant. It may degrade calibration and fairness, distort performance estimates,
Detection and mitigation strategies encompass drift monitoring, calibration checks, and fairness audits, as well as performance
Examples appear in systems like credit scoring, hiring tools, or sentiment classifiers, where economic, policy, or