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Crime amount prediction based on 2D convolution and long short-term memory neural network

  • Dong, Qifen (Department of Computer and Information Security, Zhejiang Police College) ;
  • Ye, Ruihui (Department of Intelligent Security, Zhejiang College of Security Technology) ;
  • Li, Guojun (Department of Basic Courses, Zhejiang Police College)
  • Received : 2021.10.27
  • Accepted : 2022.02.20
  • Published : 2022.04.10

Abstract

Crime amount prediction is crucial for optimizing the police patrols' arrangement in each region of a city. First, we analyzed spatiotemporal correlations of the crime data and the relationships between crime and related auxiliary data, including points-of-interest (POI), public service complaints, and demographics. Then, we proposed a crime amount prediction model based on 2D convolution and long short-term memory neural network (2DCONV-LSTM). The proposed model captures the spatiotemporal correlations in the crime data, and the crime-related auxiliary data are used to enhance the regional spatial features. Extensive experiments on real-world datasets are conducted. Results demonstrated that capturing both temporal and spatial correlations in crime data and using auxiliary data to extract regional spatial features improve the prediction performance. In the best case scenario, the proposed model reduces the prediction error by at least 17.8% and 8.2% compared with support vector regression (SVR) and LSTM, respectively. Moreover, excessive auxiliary data reduce model performance because of the presence of redundant information.

Keywords

Acknowledgement

This study was funded by Natural Science Foundation of Zhejiang Province in China under Grant LQ18G010001.

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