biasmitigating
Biasmitigating refers to practices intended to reduce bias in data, algorithms, and decisions. It is used in fields like artificial intelligence, statistics, research, and public policy to improve fairness and accuracy.
At the data level, biasmitigating includes collecting representative samples, balancing datasets, and reweighting or resampling to
At the evaluation level, practitioners measure bias with metrics such as statistical parity, equalized odds, calibration,
Governance and process include diverse teams, inclusive design processes, preregistration of studies, ethical review, transparent documentation,
Limitations and challenges include the potential for trade-offs between different fairness notions and accuracy, context-dependence of