cs.AI updates on arXiv.org 07月30日 12:12
Long-Term Fairness Inquiries and Pursuits in Machine Learning: A Survey of Notions, Methods, and Challenges
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文章探讨机器学习系统在日常生活和高风险领域的广泛应用带来的公平性问题,指出现有公平性方法可能无法实现长期公平,并分析了长期公平性研究的挑战与未来方向。

arXiv:2406.06736v3 Announce Type: replace-cross Abstract: The widespread integration of Machine Learning systems in daily life, particularly in high-stakes domains, has raised concerns about the fairness implications. While prior works have investigated static fairness measures, recent studies reveal that automated decision-making has long-term implications and that off-the-shelf fairness approaches may not serve the purpose of achieving long-term fairness. Additionally, the existence of feedback loops and the interaction between models and the environment introduces additional complexities that may deviate from the initial fairness goals. In this survey, we review existing literature on long-term fairness from different perspectives and present a taxonomy for long-term fairness studies. We highlight key challenges and consider future research directions, analyzing both current issues and potential further explorations.

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机器学习 公平性 长期影响 模型评估 未来研究
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