ISPRS International Journal of Geo-Information (Jul 2024)

Graph Representation Learning for Street-Level Crime Prediction

  • Haishuo Gu,
  • Jinguang Sui,
  • Peng Chen

DOI
https://doi.org/10.3390/ijgi13070229
Journal volume & issue
Vol. 13, no. 7
p. 229

Abstract

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In contemporary research, the street network emerges as a prominent and recurring theme in crime prediction studies. Meanwhile, graph representation learning shows considerable success, which motivates us to apply the methodology to crime prediction research. In this article, a graph representation learning approach is utilized to derive topological structure embeddings within the street network. Subsequently, a heterogeneous information network that incorporates both the street network and urban facilities is constructed, and embeddings through link prediction tasks are obtained. Finally, the two types of high-order embeddings, along with other spatio-temporal features, are fed into a deep neural network for street-level crime prediction. The proposed framework is tested using data from Beijing, and the outcomes demonstrate that both types of embeddings have a positive impact on crime prediction, with the second embedding showing a more significant contribution. Comparative experiments indicate that the proposed deep neural network offers superior efficiency in crime prediction.

Keywords