作为支配的自动决策

Q2 Computer Science First Monday Pub Date : 2024-04-14 DOI:10.5210/fm.v29i4.13630
Jenna Burrell
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引用次数: 0

摘要

机器学习伦理学研究明显存在偏差。将公平定义为分配或分配问题的研究,以及提出可计算的公平定义的研究,都被过度生产和过度发表。本文从社会学角度出发,解释了计算机科学领域内微妙的社会生产过程如何部分地解释了这一结果。我认为分配公平作为正义的定义具有内在局限性,并指出该领域的研究人员可以如何更广泛地利用政治哲学、知识哲学以及女权主义和批判性种族理论的知识见解。我认为,主要借鉴哲学家伊里斯-马里恩-扬(Iris Marion Young)的论点,不公正的定义不是分配不公,而是支配,这样就能更好地解释研究界广泛认可的算法伤害现象。这一替代定义扩大了算法正义的解决空间,使其包括代码修复之外的其他形式的后果性行动,如立法、参与性评估、用户再利用和抵制形式,以及导致禁止某些技术用途的激进主义。
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Automated decision-making as domination
Machine learning ethics research is demonstrably skewed. Work that defines fairness as a matter of distribution or allocation and that proposes computationally tractable definitions of fairness has been overproduced and overpublished. This paper takes a sociological approach to explain how subtle processes of social-reproduction within the field of computer science partially explains this outcome. Arguing that allocative fairness is inherently limited as a definition of justice, I point to how researchers in this area can make broader use of the intellectual insights from political philosophy, philosophy of knowledge, and feminist and critical race theories. I argue that a definition of injustice not as allocative unfairness but as domination, drawing primarily from the argument of philosopher Iris Marion Young, would better explain observations of algorithmic harm that are widely acknowledged in this research community. This alternate definition expands the solution space for algorithmic justice to include other forms of consequential action beyond code fixes, such as legislation, participatory assessments, forms of user repurposing and resistance, and activism that leads to bans on certain uses of technology.
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来源期刊
First Monday
First Monday Computer Science-Computer Networks and Communications
CiteScore
2.20
自引率
0.00%
发文量
86
期刊介绍: First Monday is one of the first openly accessible, peer–reviewed journals on the Internet, solely devoted to the Internet. Since its start in May 1996, First Monday has published 1,035 papers in 164 issues; these papers were written by 1,316 different authors. In addition, eight special issues have appeared. The most recent special issue was entitled A Web site with a view — The Third World on First Monday and it was edited by Eduardo Villanueva Mansilla. First Monday is indexed in Communication Abstracts, Computer & Communications Security Abstracts, DoIS, eGranary Digital Library, INSPEC, Information Science & Technology Abstracts, LISA, PAIS, and other services.
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