Fair or Unfair Algorithmic Differentiation? Luck Egalitarianism As a Lens for Evaluating Algorithmic Decision-Making.

Laurens Naudts
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引用次数: 3

Abstract

Differentiation is often intrinsic to the functioning of algorithms. Within large data sets, ‘differentiating grounds’, such as correlations or patterns, are found, which in turn, can be applied by decision-makers to distinguish between individuals or groups of individuals. As the use of algorithms becomes more wide-spread, the chance that algorithmic forms of differentiation result in unfair outcomes increases. Intuitively, certain (random) algorithmic, classification acts, and the decisions that are based on them, seem to run counter to the fundamental notion of equality. It nevertheless remains difficult to articulate why exactly we find certain forms of algorithmic differentiation fair or unfair, vis-a-vis the general principle of equality. Concentrating on Dworkin’s notions brute and option luck, this discussion paper presents a luck egalitarian perspective as a potential approach for making this evaluation possible. The paper then considers whether this perspective can also inform us with regard to the interpretation of EU data protection legislation, and the General Data Protection Regulation in particular. Considering data protection’s direct focus on the data processes underlying algorithms, the GDPR might, when informed by egalitarian notions, form a more practically feasible way of governing algorithmic inequalities.
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公平还是不公平的算法微分?运气平均主义作为评估算法决策的镜头。
微分通常是算法的内在功能。在大型数据集中,发现了“区分依据”,例如相关性或模式,进而决策者可以应用这些依据来区分个人或个人群体。随着算法的使用越来越广泛,算法形式的差异化导致不公平结果的可能性也在增加。直觉上,某些(随机的)算法、分类行为,以及基于它们的决策,似乎与平等的基本概念背道而驰。然而,相对于一般的平等原则,我们很难确切地解释为什么我们会发现某些形式的算法区分是公平的还是不公平的。本文集中讨论了德沃金的蛮力和选择运气的概念,提出了一种运气平等主义的观点,作为使这种评估成为可能的潜在方法。然后,本文考虑了这一观点是否也可以告诉我们关于欧盟数据保护立法的解释,特别是一般数据保护条例。考虑到数据保护直接关注算法背后的数据处理过程,在平等主义观念的指导下,GDPR可能会形成一种更实际可行的治理算法不平等的方法。
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