Learning Fair Representations via Rate-Distortion Maximization
Text representations learned by machine learning models often encode undesirable demographic information of the user. Predictive models based on these representations can rely on such information resulting in biased decisions. We present a novel debiasing technique Fairness-aware Rate Maximization (FaRM), that removes demographic information by making representations of instances belonging to the same protected attribute class uncorrelated using the rate-distortion function. FaRM is able to debias representations with or without a target task at hand. FaRM can also be adapted to simultaneously remove information about multiple protected attributes. Empirical evaluations show that FaRM achieves state-of-the-art performance on several datasets, and learned representations leak significantly less protected attribute information against an attack by a non-linear probing network.
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