论文标题

通过进化多目标合奏学习来缓解不公平性

Mitigating Unfairness via Evolutionary Multi-objective Ensemble Learning

论文作者

Zhang, Qingquan, Liu, Jialin, Zhang, Zeqi, Wen, Junyi, Mao, Bifei, Yao, Xin

论文摘要

在减轻机器学习不公平性的文献中,许多公平措施旨在评估学习模型的预测,并被用于指导公平模型的培训。从理论和经验上看,精度和多种公平措施之间存在冲突和不一致。优化一项或几项公平措施可能会牺牲或恶化其他措施。应该考虑两个关键问题,即如何同时优化准确性和多重公平措施,以及如何更有效地优化所有所考虑的公平措施。在本文中,我们将缓解不公平的问题视为一个多目标学习问题,考虑到公平措施之间的冲突。多目标进化学习框架用于同时优化机器学习模型的几个指标(包括准确性和多个公平度量)。然后,基于学习模型构建合奏,以自动平衡不同的指标。八个知名数据集的经验结果表明,与缓解不公平性的最新方法相比,我们提出的算法可以为决策者提供更好的精确度和多重公平度量的折衷。此外,该框架生成的高质量模型可用于构建合奏,以自动在所有考虑的公平指标之间自动取得更好的权衡,而不是其他集合方法。我们的代码可在https://github.com/qingquan63/fairemol上公开获取

In the literature of mitigating unfairness in machine learning, many fairness measures are designed to evaluate predictions of learning models and also utilised to guide the training of fair models. It has been theoretically and empirically shown that there exist conflicts and inconsistencies among accuracy and multiple fairness measures. Optimising one or several fairness measures may sacrifice or deteriorate other measures. Two key questions should be considered, how to simultaneously optimise accuracy and multiple fairness measures, and how to optimise all the considered fairness measures more effectively. In this paper, we view the mitigating unfairness problem as a multi-objective learning problem considering the conflicts among fairness measures. A multi-objective evolutionary learning framework is used to simultaneously optimise several metrics (including accuracy and multiple fairness measures) of machine learning models. Then, ensembles are constructed based on the learning models in order to automatically balance different metrics. Empirical results on eight well-known datasets demonstrate that compared with the state-of-the-art approaches for mitigating unfairness, our proposed algorithm can provide decision-makers with better tradeoffs among accuracy and multiple fairness metrics. Furthermore, the high-quality models generated by the framework can be used to construct an ensemble to automatically achieve a better tradeoff among all the considered fairness metrics than other ensemble methods. Our code is publicly available at https://github.com/qingquan63/FairEMOL

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