Learning Time-Varying Convexifications of Multiple Fairness Measures
By: Quan Zhou, Jakub Marecek, Robert Shorten
Potential Business Impact:
Teaches computers to be fair in different ways.
There is an increasing appreciation that one may need to consider multiple measures of fairness, e.g., considering multiple group and individual fairness notions. The relative weights of the fairness regularisers are a priori unknown, may be time varying, and need to be learned on the fly. We consider the learning of time-varying convexifications of multiple fairness measures with limited graph-structured feedback.
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