Litcius/Paper detail

Explanation-guided fairness testing through genetic algorithm

Ming Fan, Wenying Wei, Wuxia Jin, Zijiang Yang, Ting Liu

2022Proceedings of the 44th International Conference on Software Engineering45 citationsDOI

Abstract

The fairness characteristic is a critical attribute of trusted AI systems. A plethora of research has proposed diverse methods for individual fairness testing. However, they are suffering from three major limitations, i.e., low efficiency, low effectiveness, and model-specificity. This work proposes ExpGA, an explanation-guided fairness testing approach through a genetic algorithm (GA). ExpGA employs the explanation results generated by interpretable methods to collect high-quality initial seeds, which are prone to derive discriminatory samples by slightly modifying feature values. ExpGA then adopts GA to search discriminatory sample candidates by optimizing a fitness value. Benefiting from this combination of explanation results and GA, ExpGA is both efficient and effective to detect discriminatory individuals. Moreover, ExpGA only requires prediction probabilities of the tested model, resulting in a better generalization capability to various models. Experiments on multiple real-world benchmarks, including tabular and text datasets, show that ExpGA presents higher efficiency and effectiveness than four state-of-the-art approaches.

Topics & Concepts

GeneralizationComputer scienceGenetic algorithmMachine learningArtificial intelligenceValue (mathematics)Quality (philosophy)Feature (linguistics)Sample (material)Fairness measureAlgorithmData miningMathematicsChromatographyThroughputTelecommunicationsPhilosophyChemistryEpistemologyMathematical analysisWirelessLinguisticsAdversarial Robustness in Machine LearningEthics and Social Impacts of AIExplainable Artificial Intelligence (XAI)