Fairness Reprogramming
Guanhua Zhang, Yihua Zhang, Yang Zhang, Wenqi Fan, Qing Li, Sijia Liu,, Shiyu Chang

TL;DR
This paper introduces FairReprogram, a novel approach to enhance ML fairness by appending a tunable fairness trigger to inputs, avoiding retraining large models and effectively obscuring demographic biases.
Contribution
The paper proposes a new fairness learning paradigm using model reprogramming with input perturbations, providing a theoretical framework and empirical evidence of improved fairness without retraining.
Findings
Effective bias obfuscation in fixed models
Better fairness than retraining methods
Requires less data for fairness improvements
Abstract
Despite a surge of recent advances in promoting machine Learning (ML) fairness, the existing mainstream approaches mostly require retraining or finetuning the entire weights of the neural network to meet the fairness criteria. However, this is often infeasible in practice for those large-scale trained models due to large computational and storage costs, low data efficiency, and model privacy issues. In this paper, we propose a new generic fairness learning paradigm, called FairReprogram, which incorporates the model reprogramming technique. Specifically, FairReprogram considers the case where models can not be changed and appends to the input a set of perturbations, called the fairness trigger, which is tuned towards the fairness criteria under a min-max formulation. We further introduce an information-theoretic framework that explains why and under what conditions fairness goals can be…
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Code & Models
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Taxonomy
TopicsInsurance, Mortality, Demography, Risk Management · Health, Environment, Cognitive Aging
