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Database Repair Meets Algorithmic Fairness

机译:数据库修复符合算法公平性

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摘要

Fairness is increasingly recognized as a critical component of machine learning systems. However, it is the underlying data on which these systems are trained that often reflect discrimination, suggesting a database repair problem. Existing treatments of fairness rely on statistical correlations that can be fooled by anomalies, such as Simpson's paradox. Proposals for causality-based definitions of fairness can correctly model some of these situations, but they rely on background knowledge of the underlying causal models. In this paper, we formalize the situation as a database repair problem, proving sufficient conditions for fair classifiers in terms of admissible variables as opposed to a complete causal model. We show that these conditions correctly capture subtle fairness violations. We then use these conditions as the basis for database repair algorithms that provide provable fairness guarantees about classifiers trained on their training labels. We demonstrate the effectiveness of our proposed techniques with experimental results.
机译:公平越来越被认为是机器学习系统的关键组成部分。但是,它是培训这些系统的潜在数据,这些数据通常反映歧视,表明数据库修复问题。公平的现有治疗依赖于可以被异常欺骗的统计相关性,例如辛普森的悖论。基于因果关系的公平定义的提案可以正确模拟这些情况,但他们依靠潜在因果模型的背景知识。在本文中,我们将局势正式化为数据库修复问题,从而证明了在可接受的变量方面对公平分类器的充分条件相反,而不是完整的因果模型。我们展示了这些条件正确地捕捉了微妙的公平违规。然后,我们将这些条件作为数据库修复算法的基础,提供关于在其培训标签上接受培训的分类器的可提供公平保证的基础。我们展示了我们提出的技术具有实验结果的有效性。

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  • 来源
    《SIGMOD record》 |2020年第1期|34-41|共8页
  • 作者单位

    Univ Washington Seattle WA 98195 USA;

    Univ Washington Seattle WA 98195 USA;

    Univ Washington Seattle WA 98195 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 22:01:27

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