Forecasting (Oct 2021)

Examining Deep Learning Architectures for Crime Classification and Prediction

  • Panagiotis Stalidis,
  • Theodoros Semertzidis,
  • Petros Daras

DOI
https://doi.org/10.3390/forecast3040046
Journal volume & issue
Vol. 3, no. 4
pp. 741 – 762

Abstract

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In this paper, a detailed study on crime classification and prediction using deep learning architectures is presented. We examine the effectiveness of deep learning algorithms in this domain and provide recommendations for designing and training deep learning systems for predicting crime areas, using open data from police reports. Having time-series of crime types per location as training data, a comparative study of 10 state-of-the-art methods against 3 different deep learning configurations is conducted. In our experiments with 5 publicly available datasets, we demonstrate that the deep learning-based methods consistently outperform the existing best-performing methods. Moreover, we evaluate the effectiveness of different parameters in the deep learning architectures and give insights for configuring them to achieve improved performance in crime classification and finally crime prediction.

Keywords