The impact of overbooking on a pre-trial risk assessment tool

K. Lum, Chesa Boudin, Megan Price
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引用次数: 7

Abstract

Pre-trial risk assessment tools are used to make recommendations to judges about appropriate conditions of pre-trial supervision for people who have been arrested. Increasingly, there is concern about whether these models are operating fairly, including concerns about whether the models' input factors are fair measures of one's criminal activity. In this paper, we assess the impact of booking charges that do not result in a conviction on a popular risk assessment tool, the Arnold Public Safety Assessment. Using data from a pilot run of the tool in San Francisco, CA, we find that booking charges that do not result in a conviction (i.e. charges that are dropped or end in an acquittal) increased the recommended level of pre-trial supervision in around 27% of cases evaluated by the tool.
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超额预订对审前风险评估工具的影响
审前风险评估工具用于向法官建议对被捕人员进行审前监督的适当条件。越来越多的人担心这些模型是否公平运作,包括担心模型的输入因素是否公平地衡量一个人的犯罪活动。在本文中,我们评估了不导致定罪的预订费用对流行的风险评估工具阿诺德公共安全评估的影响。利用该工具在加州旧金山试点运行的数据,我们发现,在该工具评估的约27%的案件中,未导致定罪的预订指控(即撤销指控或最终被无罪释放)提高了审前监督的建议水平。
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