Litcius/Paper detail

The <scp>fairness‐accuracy</scp> Pareto front

Susan Wei, Marc Niethammer

2021Statistical Analysis and Data Mining The ASA Data Science Journal17 citationsDOI

Abstract

Abstract Algorithmic fairness seeks to identify and correct sources of bias in machine learning algorithms. Confoundingly, ensuring fairness often comes at the cost of accuracy. We provide formal tools in this work for reconciling this fundamental tension in algorithm fairness. Specifically, we put to use the concept of Pareto optimality from multiobjective optimization and seek the fairness‐accuracy Pareto front of a neural network classifier. We demonstrate that many existing algorithmic fairness methods are performing the so‐called linear scalarization scheme, which has severe limitations in recovering Pareto optimal solutions. We instead apply the Chebyshev scalarization scheme which is provably superior theoretically and no more computationally burdensome at recovering Pareto optimal solutions compared to the linear scheme.

Topics & Concepts

Computer scienceScheme (mathematics)Pareto principleMathematical optimizationMulti-objective optimizationPareto optimalChebyshev filterClassifier (UML)Chebyshev polynomialsFairness measureAlgorithmArtificial intelligenceMathematicsMachine learningThroughputTelecommunicationsComputer visionMathematical analysisWirelessAdversarial Robustness in Machine LearningMachine Learning and Data ClassificationReinforcement Learning in Robotics