Predicting the Offender: Frequency versus Bayes

A. D. Sutmuller, M. Hengst, A. I. Barros, B. V. D. Vecht, Wouter Noordkamp, P. Gelder
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Abstract

In this paper two Bayesian approaches and a frequency approach are compared on predicting offender output variables based on the input of crime scene and victim variables. The K2 algorithm, Naïve Bayes and frequency approach were trained to make the correct prediction using a database of 233 solved Dutch single offender/single victim homicide cases and validated using a database of 35 solved Dutch single offender/single victim homicide cases. The comparison between the approaches was made using the measures of overall prediction accuracy and confidence level analysis. Besides the comparison of the three approaches, the correct predicted nodes per output variable and the correct predicted nodes per validation case were analyzed to investigate whether the approaches could be used as a decision tool in practice to limit the incorporation of persons of interest into homicide investigations. The results of this study can be summarized as: the non-intelligent frequency approach shows similar or better results than the intelligent Bayesian approaches and the usability of the approaches as a decision tool to limit the incorporation of persons of interest into homicide investigations should be questioned.
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预测罪犯:频率与贝叶斯
本文比较了基于犯罪现场和被害人变量输入的两种贝叶斯方法和频率方法对罪犯输出变量的预测。对K2算法、Naïve贝叶斯和频率方法进行了训练,使其能够使用233个已解决的荷兰单一罪犯/单一受害者杀人案件数据库做出正确的预测,并使用35个已解决的荷兰单一罪犯/单一受害者杀人案件数据库进行了验证。采用总体预测精度和置信度分析对两种方法进行比较。除了对三种方法进行比较外,还分析了每个输出变量的正确预测节点和每个验证案例的正确预测节点,以探讨这些方法是否可以作为实践中的决策工具,以限制将感兴趣的人纳入凶杀案调查。本研究的结果可以概括为:非智能频率方法显示出与智能贝叶斯方法相似或更好的结果,这些方法作为限制将感兴趣的人纳入凶杀调查的决策工具的可用性应该受到质疑。
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