预测累犯的算法应该有种族吗?

IF 0.8 2区 哲学 0 PHILOSOPHY
D. Purves, Jeremy Davis
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引用次数: 0

摘要

最近的研究表明,像COMPAS这样的累犯评分算法存在明显的种族偏见:黑人被告被错误地归类为中等或高风险的可能性大约是白人被告的两倍。这导致一些人呼吁废除COMPAS。但也有许多人认为,算法应该获得被告的种族信息,这可能会改善结果,这或许与直觉相反。这种方法既可以建立种族敏感的风险阈值,也可以建立明显的种族“轨迹”。这两种方法在道德上有区别吗?我们首先考虑Deborah Hellman的观点,即使用不同的种族轨迹(但不是不同的阈值)并不构成差别待遇,因为对个人的影响是间接的,不依赖于种族概括。我们认为这是错误的:使用不同的种族轨迹似乎既对种族概括有直接影响,又依赖于种族概括。然后,我们对这两种方法之间的区别提供了另一种理解——即,使用不同的切割点对所有白人被告来说都是反事实的相对劣势,而使用不同的种族轨迹原则上可能对所有群体都有利,尽管两组中的一些被告的情况会更糟。这是否意味着切点的使用是不允许的?最后,我们认为,虽然有理由对使用不同的切割点持怀疑态度,但这些理由是否足以对其道德容忍度产生影响是一个悬而未决的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Should Algorithms that Predict Recidivism Have Access to Race?
Recent studies have shown that recidivism scoring algorithms like COMPAS have significant racial bias: Black defendants are roughly twice as likely as white defendants to be mistakenly classified as medium- or high-risk. This has led some to call for abolishing COMPAS. But many others have argued that algorithms should instead be given access to a defendant's race, which, perhaps counterintuitively, is likely to improve outcomes. This approach can involve either establishing race-sensitive risk thresholds, or distinct racial ‘tracks’. Is there a moral difference between these two approaches? We first consider Deborah Hellman's view that the use of distinct racial tracks (but not distinct thresholds) does not constitute disparate treatment since the effects on individuals are indirect and does not rely on a racial generalization. We argue that this is mistaken: the use of different racial tracks seems both to have direct effects on and to rely on a racial generalization. We then offer an alternative understanding of the distinction between these two approaches—namely, that the use of different cut points is to the counterfactual comparative disadvantage, ex ante, of all white defendants, while the use of different racial tracks can in principle be to the advantage of all groups, though some defendants in both groups will fare worse. Does this mean that the use of cut points is impermissible? Ultimately, we argue, while there are reasons to be skeptical of the use of distinct cut points, it is an open question whether these reasons suffice to make a difference to their moral permissibility.
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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
22
期刊介绍: Since its inauguration in 1964, the American Philosophical Quarterly (APQ) has established itself as one of the principal English vehicles for the publication of scholarly work in philosophy. The whole of each issue—printed in a large-page, double-column format—is given to substantial articles; from time to time there are also "state of the art" surveys of recent work on particular topics. The editorial policy is to publish work of high quality, regardless of the school of thought from which it derives.
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