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      • Faculty of Engineering
      • Department of Electrical and Electronics Engineering
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      Crime prediction with graph neural networks and multivariate normal distributions

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      Author(s)
      Tekin, Selim Furkan
      Kozat, Süleyman Serdar
      Date
      2022-07-01
      Source Title
      Signal, Image and Video Processing
      Print ISSN
      1863-1703
      Electronic ISSN
      1863-1711
      Publisher
      Springer UK
      Pages
      1 - 7
      Language
      English
      Type
      Article
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      Abstract
      We study high-resolution crime prediction and introduce a new generative model applicable to any spatiotemporal data with graph convolutional gated recurrent units (Graph-ConvGRU) and multivariate Gaussian distributions. We introduce a subdivision algorithm and create a graph representation to tackle the sparsity and complexity problem in high-resolution spatiotemporal data. By leveraging the flexible structure of graph representation, we model the spatial, temporal, and categorical relations of crime events and produce state vectors for each region. We create a multivariate probability distribution from the state vectors and train the distributions by minimizing the KL divergence between the generated and the actual distribution of the crime events. After creating the distributions, crime can be predicted in any resolution as the first time in the literature. In our experiments on real-life and synthetic datasets, our model obtains the best score with respect to the state-of-the-art models with statistically significant improvements. Hence, our model is not only generative but also precise. We also provide the source code of our algorithm for reproducibility.
      Keywords
      Crime forecasting
      Probabilistic graph models
      Deep learning
      Permalink
      http://hdl.handle.net/11693/111381
      Published Version (Please cite this version)
      https://www.doi.org/10.1007/s11760-022-02311-2
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      • Department of Electrical and Electronics Engineering 4011
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