一种理论驱动的犯罪热点实时预测算法

IF 2.9 2区 社会学 Q1 CRIMINOLOGY & PENOLOGY
Yongjei Lee, O. SooHyun, J. Eck
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引用次数: 18

摘要

实时犯罪热点预测对警务工作提出了挑战。在犯罪学和刑事司法领域以外的学科中,预测算法存在大量的热点错误分类和缺乏理论支持。透明度尤其重要,因为大多数热点预测模型不提供其潜在机制。为了应对这些挑战,我们在算法中运用了两种不同的理论来预测波特兰和辛辛那提的犯罪热点。首先,我们使用人口异质性框架来寻找一致的热点地区。其次,我们使用了预测月份之前时间段内犯罪数量的状态依赖模型。该算法在Excel中实现,使其非常简单,应用和完全透明。我们的预测模型在波特兰市和辛辛那提市的热点预测中均显示出较高的准确性和高效率。我们建议需要重新考虑以前开发的热点预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Theory-Driven Algorithm for Real-Time Crime Hot Spot Forecasting
Real-time crime hot spot forecasting presents challenges to policing. There is a high volume of hot spot misclassifications and a lack of theoretical support for forecasting algorithms, especially in disciplines outside the fields of criminology and criminal justice. Transparency is particularly important as most hot spot forecasting models do not provide their underlying mechanisms. To address these challenges, we operationalize two different theories in our algorithm to forecast crime hot spots over Portland and Cincinnati. First, we use a population heterogeneity framework to find places that are consistent hot spots. Second, we use a state dependence model of the number of crimes in the time periods prior to the predicted month. This algorithm is implemented in Excel, making it extremely simple to apply and completely transparent. Our forecasting models show high accuracy and high efficiency in hot spot forecasting in both Portland and Cincinnati context. We suggest previously developed hot spot forecasting models need to be reconsidered.
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来源期刊
Police Quarterly
Police Quarterly CRIMINOLOGY & PENOLOGY-
CiteScore
5.90
自引率
6.50%
发文量
22
期刊介绍: Police Quarterly is a scholarly, peer-reviewed journal that publishes theoretical contributions, empirical studies, essays, comparative analyses, critiques, innovative program descriptions, debates, and book reviews on issues related to policing.
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