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arxiv: 1705.09055 · v1 · pith:65252Y35new · submitted 2017-05-25 · 💻 cs.LG

The cost of fairness in classification

classification 💻 cs.LG
keywords fairnessproblemclassificationcost-sensitivelearningmeasuresrisksaccuracy
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We study the problem of learning classifiers with a fairness constraint, with three main contributions towards the goal of quantifying the problem's inherent tradeoffs. First, we relate two existing fairness measures to cost-sensitive risks. Second, we show that for cost-sensitive classification and fairness measures, the optimal classifier is an instance-dependent thresholding of the class-probability function. Third, we show how the tradeoff between accuracy and fairness is determined by the alignment between the class-probabilities for the target and sensitive features. Underpinning our analysis is a general framework that casts the problem of learning with a fairness requirement as one of minimising the difference of two statistical risks.

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