Can We Obtain Fairness For Free?

Rashidul Islam, Shimei Pan, James R. Foulds
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引用次数: 14

Abstract

There is growing awareness that AI and machine learning systems can in some cases learn to behave in unfair and discriminatory ways with harmful consequences. However, despite an enormous amount of research, techniques for ensuring AI fairness have yet to see widespread deployment in real systems. One of the main barriers is the conventional wisdom that fairness brings a cost in predictive performance metrics such as accuracy which could affect an organization's bottom-line. In this paper we take a closer look at this concern. Clearly fairness/performance trade-offs exist, but are they inevitable? In contrast to the conventional wisdom, we find that it is frequently possible, indeed straightforward, to improve on a trained model's fairness without sacrificing predictive performance. We systematically study the behavior of fair learning algorithms on a range of benchmark datasets, showing that it is possible to improve fairness to some degree with no loss (or even an improvement) in predictive performance via a sensible hyper-parameter selection strategy. Our results reveal a pathway toward increasing the deployment of fair AI methods, with potentially substantial positive real-world impacts.
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我们能免费获得公平吗?
人们越来越意识到,人工智能和机器学习系统在某些情况下可能会以不公平和歧视性的方式行事,从而产生有害的后果。然而,尽管进行了大量的研究,但确保人工智能公平性的技术尚未在实际系统中得到广泛应用。其中一个主要障碍是,传统观念认为,公平性会导致预测性能指标(如准确性)的成本,这可能会影响组织的底线。在本文中,我们将仔细研究这一问题。显然,公平和性能之间存在权衡,但它们是不可避免的吗?与传统智慧相反,我们发现,在不牺牲预测性能的情况下,提高训练模型的公平性通常是可能的,而且是直接的。我们系统地研究了公平学习算法在一系列基准数据集上的行为,表明通过合理的超参数选择策略可以在一定程度上提高公平性,而不会损失(甚至改进)预测性能。我们的研究结果揭示了增加公平人工智能方法部署的途径,可能对现实世界产生重大的积极影响。
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