机器学习与行政国家的重新魅力

IF 1.5 4区 社会学 Q1 LAW
Eden Sarid, Omri Ben‐Zvi
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引用次数: 0

摘要

机器学习算法为行政机构更有效的决策提供了巨大的希望。然而,其中一些算法是不可思议的,也就是说,它们产生的预测是人类无法理解或解释的。这一特点与行政法中对理性给予的强调是矛盾的。本文探讨了这种矛盾,提出了两个相互关联的论点。首先,提供充分的理由是尊重个人能动性的一个重要方面。将难以理解的算法预测纳入行政决策会损害这一规范理想。其次,作为一个长期问题,行政机构使用难以理解的算法可能会通过逐渐减少公共生活中人类可解释的领域而产生系统性影响,这一现象被马克斯·韦伯称为“复魅”。因此,使用难以理解的机器学习算法可能会引发一种特殊的重新陶醉,使我们对共同的人类经验的理解更少,而不是更多,从而改变我们理解行政状态和体验公共生活的方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning and the Re‐Enchantment of the Administrative State
Machine learning algorithms present substantial promise for more effective decision‐making by administrative agencies. However, some of these algorithms are inscrutable, namely, they produce predictions that humans cannot understand or explain. This trait is in tension with the emphasis on reason‐giving in administrative law. The article explores this tension, advancing two interrelated arguments. First, providing adequate reasons is a significant facet of respecting individuals’ agency. Incorporating inscrutable algorithmic predictions into administrative decision‐making compromises this normative ideal. Second, as a long‐term concern, the use of inscrutable algorithms by administrative agencies may generate systemic effects by gradually reducing the realm of the humanly explainable in public life, a phenomenon Max Weber termed ‘re‐enchantment’. As a result, the use of inscrutable machine learning algorithms might trigger a special kind of re‐enchantment, making us comprehend less rather than more of shared human experience, and consequently altering the way we understand the administrative state and experience public life.
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CiteScore
2.10
自引率
0.00%
发文量
61
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