Mitigating Source Bias for Fairer Weak Supervision
–Neural Information Processing Systems
Theoretically, we show that it is possible for our approach to simultaneously improve both accuracy and fairness--in contrast to standard fairness approaches that suffer from tradeoffs. Empirically, we show that our technique improves accuracy on weak supervision baselines by as much as 32% while reducing demographic parity gap by 82.5%.
Neural Information Processing Systems
Oct-8-2025, 20:36:25 GMT
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