PolRoute-DS: a Crime Dataset for Optimization-based Police Patrol Routing

Bruno Cunha Sá, Gustavo Muller, Maicon Banni, Wagner Santos, Marcos Lage, Isabel Rosseti, Yuri Frota, Daniel de Oliveira
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引用次数: 2

Abstract

It is a well-known fact that criminality is an open, yet important, issue in most urban centers worldwide. Especially in Brazil, creating solutions to reduce crime rates is a top priority. To reduce crime rates, many cities are adopting predictive policing techniques. Predictive policing techniques are highly based on extracting valuable knowledge from a massive dataset that contains information about times, locations, and types of past crimes. The extracted knowledge is then used to provide insights to police departments to define where the police must maintain its presence. These datasets may also be used for a critical predictive policing task: defining where police patrols should patrol. Such patrols are commonly defined to cover a series of crime hot spots (areas that present high criminality levels) and have some restrictions to be considered (number of available police officers, cars, etc). Thus, defining the route for each police vehicle is a complex optimization problem, since in most cases, there are many hot spots and the existing resources are scarce, i.e., the amount of vehicles and police available is much smaller than necessary. Unfortunately, high-quality crime rates data are not easy to obtain. Aiming to tackle this problem, this article proposes the PolRoute-DS dataset, a dataset designed to foster the development and evaluation of police routing approaches in large urban centers. The PolRoute-DS combines the spatial structure of the city of interest (in the context of this article, the city of São Paulo) represented as a connected and directed graph of street segments with criminal data obtained from public sources. PolRoute-DS is available for public use under the Creative Commons By Attribution 4.0 International license (CSV and PostgreSQL versions) and can be downloaded at https://osf.io/mxrgu/.
PolRoute-DS:基于优化的警察巡逻路线犯罪数据集
众所周知,在世界上大多数城市中心,犯罪是一个公开而又重要的问题。特别是在巴西,创造降低犯罪率的解决方案是当务之急。为了降低犯罪率,许多城市正在采用预测性警务技术。预测性警务技术高度依赖于从大量数据集中提取有价值的知识,这些数据集中包含有关时间、地点和过去犯罪类型的信息。然后,提取的知识用于向警察部门提供见解,以确定警察必须在哪里保持存在。这些数据集也可以用于关键的预测性警务任务:定义警察巡逻队应该巡逻的地方。这种巡逻通常被定义为覆盖一系列犯罪热点(犯罪率高的地区),并且需要考虑一些限制(可用警察的数量、车辆等)。因此,确定每辆警车的路线是一个复杂的优化问题,因为在大多数情况下,热点多,现有资源稀缺,即可用的车辆和警察数量远远小于所需的数量。不幸的是,高质量的犯罪率数据并不容易获得。为了解决这一问题,本文提出了PolRoute-DS数据集,该数据集旨在促进大型城市中心警察路线方法的开发和评估。PolRoute-DS将目标城市的空间结构(本文中指的是圣保罗市)与从公共来源获得的犯罪数据结合在一起,以一种连接和有向的街道段图的形式表示。PolRoute-DS在国际知识共享署名4.0许可(CSV和PostgreSQL版本)下可供公众使用,并可从https://osf.io/mxrgu/下载。
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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