Comparing Conventional and Machine-Learning Approaches to Risk Assessment in Domestic Abuse Cases

J. Grogger, Sean Gupta, Ria Ivandić, Tom Kirchmaier
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引用次数: 23

Abstract

We compare predictions from a conventional protocol-based approach to risk assessment with those based on a machine-learning approach. We first show that the conventional predictions are less accurate than, and have similar rates of negative prediction error as, a simple Bayes classifier that makes use only of the base failure rate. A random forest based on the underlying risk assessment questionnaire does better under the assumption that negative prediction errors are more costly than positive prediction errors. A random forest based on two-year criminal histories does better still. Indeed, adding the protocol-based features to the criminal histories adds almost nothing to the predictive adequacy of the model. We suggest using the predictions based on criminal histories to prioritize incoming calls for service, and devising a more sensitive instrument to distinguish true from false positives that result from this initial screening.
比较传统和机器学习方法在家庭暴力案件中的风险评估
我们将传统的基于协议的风险评估方法的预测与基于机器学习方法的预测进行了比较。我们首先表明,传统预测的准确性低于仅使用基本故障率的简单贝叶斯分类器,并且具有相似的负预测错误率。基于潜在风险评估问卷的随机森林在负预测误差比正预测误差代价更大的假设下表现更好。基于两年犯罪记录的随机森林则更好。事实上,将基于协议的特征添加到犯罪历史中几乎没有增加模型的预测充分性。我们建议使用基于犯罪历史的预测来优先考虑服务来电,并设计一种更敏感的工具来区分最初筛选产生的真假阳性。
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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