Prediction of Crime in Neighbourhoods of New York City using Spatial Data Analysis

Abrar A. Almuhanna, Marwa M. Alrehili, Samah H. Alsubhi, Liyakathunisa Syed
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引用次数: 4

Abstract

Crimes prediction is one of the most important topics in recent years that aim to protect people’s lives. These analytical studies for criminal hotspots are frequently demanded by law enforcement agencies hence, there is a huge requirement and demand for enhanced geographic information systems and innovative spatial data mining techniques in order to enhance crime detections and better protect their communities. In this paper, we propose a methodology to predict Spatio-temporal criminal patterns within the New York City neighbourhoods using a dataset from 2006 until 2019 with 2.2M criminal records for 25 different crimes type. In order to achieve the study objectives, the methodology passes through several stages until the final results are reached, starting with the visualization analysis of Spatio-temporal New York crime data which is important in decision-making, followed by, applying three different classifiers namely; Support Vector Machine (SVM), Random Forest (RF), and XGboost classifiers. After analysis, it is illustrated that XGboost has predicted the highest number of correct classifications out of 25 different crime types it has predicted 22 types of crime accurately, whereas Random Forest has predicted 21 types of crime accurately and SVM predicted accurately 17 types of crimes with lowest accuracy. Hence XGBoost outperformed all other models and can be considered for detection of crimes in the neighborhood.
利用空间数据分析预测纽约市社区犯罪
犯罪预测是近年来以保护人们生命安全为目的的重要课题之一。执法机构经常需要对犯罪热点进行分析研究,因此,为了加强罪案侦破和更好地保护社区,对增强地理信息系统和创新空间数据挖掘技术的需求和需求很大。在本文中,我们提出了一种方法来预测纽约市社区内的时空犯罪模式,该方法使用了2006年至2019年的数据集,其中包含25种不同犯罪类型的220万犯罪记录。为了实现研究目标,该方法经历了几个阶段,直到达到最终结果,首先是对纽约时空犯罪数据的可视化分析,这对决策很重要,然后,应用三种不同的分类器,即;支持向量机(SVM)、随机森林(RF)和XGboost分类器。经过分析,可以看出,在25种不同的犯罪类型中,XGboost预测的正确分类数量最多,它准确预测了22种犯罪,而Random Forest准确预测了21种犯罪,SVM准确预测了17种犯罪,准确率最低。因此,XGBoost优于所有其他模型,可以考虑用于附近的犯罪检测。
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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