SOTAVerified

Accuracy and Fairness Trade-offs in Machine Learning: A Stochastic Multi-Objective Approach

2020-08-03Code Available1· sign in to hype

Suyun Liu, Luis Nunes Vicente

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

In the application of machine learning to real-life decision-making systems, e.g., credit scoring and criminal justice, the prediction outcomes might discriminate against people with sensitive attributes, leading to unfairness. The commonly used strategy in fair machine learning is to include fairness as a constraint or a penalization term in the minimization of the prediction loss, which ultimately limits the information given to decision-makers. In this paper, we introduce a new approach to handle fairness by formulating a stochastic multi-objective optimization problem for which the corresponding Pareto fronts uniquely and comprehensively define the accuracy-fairness trade-offs. We have then applied a stochastic approximation-type method to efficiently obtain well-spread and accurate Pareto fronts, and by doing so we can handle training data arriving in a streaming way.

Tasks

Reproductions