利用兴趣点进行预测性警务

Luís Gustavo Coutinho do Rêgo, T. C. D. Silva, R. P. Magalhães, J. Macêdo, W. C. P. Silva
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引用次数: 4

摘要

据世界卫生组织称,在许多重要城市,高犯罪率已经成为一个公共卫生问题。为了解决这个问题,许多研究人员一直在开发预测犯罪事件的算法。智慧城市的环境可以为我们提供足够的无处不在的数据,例如交通流量、人员流动性和兴趣点(POI)信息,以满足这些预测警务算法并反映城市动态。poi数据提供诸如地理位置、类别、客户评论和繁忙时间等基本信息。最近的研究表明,POI的地理位置对预测性警务很有用。在本文中,我们的目标是在一个具有新环境特征的城市的poi周围划定的区域内预测犯罪。在我们的问题中,我们研究了poi位置与poi数据的语义和时间特征的相关性。我们还提出并分析了不同的机器学习方法来训练基于这些特征的预测函数,并在多年的真实犯罪数据上进行了实验。实验表明,流行时间特征比历史信息的相关性更强,但两者的重要性都远低于时空信息。这项工作是第一个研究从poi数据和历史犯罪信息中提取的流行时间特征用于预测警务的作者的知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting points of interest for predictive policing
High crime rates have become a public health problem in many important cities, according to World Health Organization. Many researchers have been developing algorithms to predict crime occurrences to tackle this problem. The smart cities' environment can provide us enough ubiquitous data, e.g., traffic flow, human mobility, and Points of Interest (POI) information, to feed those predictive policing algorithms and reflect city dynamics. POIs data provide essential information such as geographical location, category, customer reviews, and busy hours. Recent studies have shown that POI geographical locations are useful for predictive policing. In this paper, we aim at predicting crimes in a delimited region around the POIs of a city with new environmental features. We investigate the relevance of POIs location and the semantic and the temporal features from POIs data in our problem. We also propose and analyze different machine learning approaches to train prediction functions based on these features and conduct experiments on real crime data over multiple years. The experiments demonstrate that the popular time feature is more relevant than the historical information about the number of crimes around a POI, but both information is much less critical than the spatio-temporal information. This work is the first that studies the popular time feature extracted from POIs data and historical criminal information for predictive policing from the authors' knowledge.
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