Abstract

Nowadays, Location-Based Social Networks (LBSN) collect a vast range of information which can help us to understand the regional dynamics (i.e. human mobility) across an entire city. LBSN provides unprecedented opportunities to tackle various social problems. In this work, we explore dynamic features derived from Foursquare check-in data in short-term crime event prediction with fine spatio-temporal granularity. While crime event prediction has been investigated widely due to its social importance, its success rate is far from satisfactory. The existing studies rely on relatively static features such as regional characteristics, demographic information and the topics obtained from tweets but very few studies focus on exploring human mobility through social media. In this study, we identify a number of dynamic features based on the research findings in Criminology, and report their correlations with different types of crime events. In particular, we observe that some types of crime events are more highly correlated to the dynamic features, e.g., Theft, Drug Offence, Fraud, Unlawful Entry and Assault than others e.g. Traffic Related Offence.A key challenge of the research is that the dynamic information is very sparse compared to the relatively static information. To address this issue, we develop a matrix factorization based approach to estimate the missing dynamic features across the city. Interestingly, the estimated dynamic features still maintain the correlation with crime occurrence across different types. We evaluate the proposed methods in different time intervals. The results verify that the crime prediction performance can be significantly improved with the inclusion of dynamic features across different types of crime events.

Highlights

  • Crime event prediction is important to crime prevention in the society by helping the law enforcement agencies to design optimal patrol strategies

  • The results verify that the crime prediction performance can be significantly improved with the inclusion of dynamic features across different types of crime events

  • 7 Conclusion This work assists in solving the crime event prediction problem with its focus on exploring relevant dynamic features

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Summary

Introduction

Crime event prediction is important to crime prevention in the society by helping the law enforcement agencies to design optimal patrol strategies. Reduction of crime events will benefit society in numerous ways. It will increase the public safety and decrease the economic loss. Crime event prediction is a challenging task [1]. The spatial and temporal distributions of crime events differ from one type to the other. We can observe the difference in the spatial distribution of three different types of crime event, i.e., Theft, Drug Offence, and Assault respectively in Brisbane. Many factors are relevant to the possibility that a particular type of crime event is going to occur in a region (2018) 7:43

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