自动决策系统中的公平性和可解释性。计算机科学和法律面临的挑战

IF 2.3 Q3 MANAGEMENT
Th. Kirat , O. Tambou , V. Do , A. Tsoukiàs
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引用次数: 0

摘要

本文为分析自动算法决策中的公平问题的跨学科结构做出了贡献。第2节表明,监督学习中的技术选择具有需要考虑的社会影响。第3节提出了一种处理非故意群体歧视问题的情境方法,即表面中立但对社会群体(如性别、种族或民族)产生不成比例影响的决策规则。背景化将一方面关注美国的法律制度,另一方面关注欧洲的法律制度。特别是,立法和判例法往往在大西洋两岸促进不同的公平标准。第4节专门讨论算法决策的可解释性;它将面对并试图将(欧洲和法国法律中的)法律概念与技术概念交叉引用,并将强调与算法决策的可解释性有关的欧洲和法国的法律文本的多样性,甚至多义性。结论为进一步研究提出了方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fairness and explainability in automatic decision-making systems. A challenge for computer science and law

The paper offers a contribution to the interdisciplinary constructs of analyzing fairness issues in automatic algorithmic decisions. Section 2 shows that technical choices in supervised learning have social implications that need to be considered. Section 3 proposes a contextual approach to the issue of unintended group discrimination, i.e. decision rules that are facially neutral but generate disproportionate impacts across social groups (e.g., gender, race or ethnicity). The contextualization will focus on the legal systems of the United States on the one hand and Europe on the other. In particular, legislation and case law tend to promote different standards of fairness on both sides of the Atlantic. Section 4 is devoted to the explainability of algorithmic decisions; it will confront and attempt to cross-reference legal concepts (in European and French law) with technical concepts and will highlight the plurality, even polysemy, of European and French legal texts relating to the explicability of algorithmic decisions. The conclusion proposes directions for further research.

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来源期刊
CiteScore
2.70
自引率
10.00%
发文量
15
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