Adaptive Sensitive Reweighting to Mitigate Bias in Fairness-aware Classification

Published: Jan 1, 2018
Abstract
Machine learning bias and fairness have recently emerged as key issues due to the pervasive deployment of data-driven decision making in a variety of sectors and services. It has often been argued that unfair classifications can be attributed to bias in training data, but previous attempts to 'repair' training data have led to limited success. To circumvent shortcomings prevalent in data repairing approaches, such as those that weight training...
Paper Details
Title
Adaptive Sensitive Reweighting to Mitigate Bias in Fairness-aware Classification
Published Date
Jan 1, 2018
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