犯罪活动的时空建模

Michail Misyrlis, C. Cheung, Ajitesh Srivastava, R. Kannan, V. Prasanna
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引用次数: 6

摘要

准确的犯罪预测可以使执法部门更有效地规划资源分配,如巡逻路线和部署。我们研究了传统回归方法在预测俄勒冈州波特兰市犯罪事件中的有效性。我们将感兴趣的区域划分为等间隔的单元,并研究相邻单元之间犯罪发生率的空间自相关性。我们还尝试在回归模型中使用邻近细胞的信息以及细胞自身的时间序列来增强预测结果。我们的结果表明,回归是一种有前途的方法,优于移动窗口平均方法,特别是当要预测的未来地平线增加时。然而,邻里小区的增加降低了预测的质量,这表明犯罪的空间相关性比地理邻里更复杂。我们还探讨了波特兰网络犯罪活动与犯罪事件流行之间联系的可能性,并讨论了未来我们将采取的改进犯罪预测的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal Modeling of Criminal Activity
Accurate crime forecasting can allow law enforcement to more effectively plan their resource allocation such as patrol routes and placements. We study the effectiveness of traditional regression approaches in forecasting crime occurrences in Portland, Oregon. We divide the area of interest into equally spaced cells and investigate the spatial autocorrelation between the crime occurrence rates of neighboring cells. We also attempt to use neighboring cells' information in the regression models along with the cell's own time series to enhance the forecast results. Our results show that regression is a promising method that outperforms a moving window averaging method, especially when the future horizon to be predicted increases. However, addition of neighborhood cells decreased the quality of predictions, suggesting that spatial correlation in crime is more complex than geographical neighborhood. We also explore a possibility of connection of criminal activities and popularity of crime incidents in Portland on the Web, and discuss future directions we will take to improve crime prediction.
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