Learning fair representations via an adversarial framework

Volume: 4, Pages: 91 - 97
Published: Jan 1, 2023
Abstract
Fairness has become a central issue for our research community as classification algorithms are adopted in societally critical domains such as recidivism prediction and loan approval. In this work, we consider the potential bias based on protected attributes (e.g., race and gender), and tackle this problem by learning latent representations of individuals that are statistically indistinguishable between protected groups while sufficiently...
Paper Details
Title
Learning fair representations via an adversarial framework
Published Date
Jan 1, 2023
Journal
Volume
4
Pages
91 - 97
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