Predictive Policing for Reform? Indeterminacy and Intervention in Big Data Policing

IF 1.6 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY
Aaron Shapiro
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引用次数: 28

Abstract

Predictive analytics and artificial intelligence are applied widely across law enforcement agencies and the criminal justice system. Despite criticism that such tools reinforce inequality and structural discrimination, proponents insist that they will nonetheless improve the equality and fairness of outcomes by countering humans’ biased or capricious decision-making. How can predictive analytics be understood simultaneously as a source of, and solution to, discrimination and bias in criminal justice and law enforcement? The article provides a framework for understanding the techno-political gambit of predictive policing as a mechanism of police reform—a discourse that I call “predictive policing for reform.” Focusing specifically on geospatial predictive policing systems, I argue that “predictive policing for reform” should be seen as a flawed attempt to rationalize police patrols through an algorithmic remediation of patrol geographies. The attempt is flawed because predictive systems operate on the sociotechnical practices of police patrols, which are themselves contradictory enactments of the state’s power to distribute safety and harm. The ambiguities and contradictions of the patrol are not resolved through algorithmic remediation. Instead, they lead to new indeterminacies, trade-offs, and experimentations based on unfalsifiable claims. I detail these through a discussion of predictive policing firm HunchLab’s use of predictive analytics to rationalize patrols and mitigate bias. Understanding how the “predictive policing for reform” discourse is operationalized as a series of technical fixes that rely on the production of indeterminacies allows for a more nuanced critique of predictive policing.
预测性监管改革?大数据警务中的不确定性与干预
预测分析和人工智能广泛应用于执法机构和刑事司法系统。尽管有人批评这些工具加剧了不平等和结构性歧视,但支持者坚持认为,它们将通过对抗人类的偏见或反复无常的决策,改善结果的平等和公平。如何将预测分析同时理解为刑事司法和执法中歧视和偏见的根源和解决方案?这篇文章提供了一个框架来理解作为警察改革机制的预测性警务的技术政治策略——我称之为“改革的预测性警务”。我特别关注地理空间预测性警务系统,认为“改革预测性警务”应该被视为一种有缺陷的尝试,即通过对巡逻地理位置的算法修复来合理化警察巡逻。这种尝试是有缺陷的,因为预测系统基于警察巡逻的社会技术实践,这本身就是国家权力分配安全和伤害的矛盾行为。巡逻中的歧义和矛盾没有通过算法修复来解决。相反,它们会导致新的不确定性、权衡和基于不可证伪主张的实验。我通过对预测警务公司HunchLab使用预测分析来合理化巡逻和减轻偏见的讨论来详细说明这些问题。理解“改革的预测性警务”话语是如何作为一系列依赖于不确定性产生的技术修复来运作的,可以对预测性警务进行更细致的批评。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Surveillance & Society
Surveillance & Society SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
3.20
自引率
20.00%
发文量
42
审稿时长
26 weeks
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