Putting Fairness Principles into Practice: Challenges, Metrics, and Improvements

Alex Beutel, Jilin Chen, Tulsee Doshi, Hai Qian, Allison Woodruff, Christine Luu, Pierre Kreitmann, Jonathan Bischof, Ed H. Chi
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引用次数: 119

Abstract

As more researchers have become aware of and passionate about algorithmic fairness, there has been an explosion in papers laying out new metrics, suggesting algorithms to address issues, and calling attention to issues in existing applications of machine learning. This research has greatly expanded our understanding of the concerns and challenges in deploying machine learning, but there has been much less work in seeing how the rubber meets the road. In this paper we provide a case-study on the application of fairness in machine learning research to a production classification system, and offer new insights in how to measure and address algorithmic fairness issues. We discuss open questions in implementing equality of opportunity and describe our fairness metric, conditional equality, that takes into account distributional differences. Further, we provide a new approach to improve on the fairness metric during model training and demonstrate its efficacy in improving performance for a real-world product.
将公平原则付诸实践:挑战、度量和改进
随着越来越多的研究人员意识到算法公平性并对其充满热情,提出新指标、提出解决问题的算法以及呼吁关注现有机器学习应用中的问题的论文激增。这项研究极大地扩展了我们对部署机器学习的关注和挑战的理解,但在观察橡胶如何遇到道路方面的工作却少得多。在本文中,我们提供了一个关于公平性在机器学习研究中应用于生产分类系统的案例研究,并就如何衡量和解决算法公平性问题提供了新的见解。我们讨论了实现机会平等的开放问题,并描述了我们的公平指标,条件平等,考虑到分配差异。此外,我们提供了一种新的方法来改进模型训练期间的公平性度量,并证明了它在提高现实世界产品性能方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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