Spatial-Temporal Meta-path Guided Explainable Crime Prediction
- URL: http://arxiv.org/abs/2205.01901v3
- Date: Sat, 31 Dec 2022 11:00:42 GMT
- Title: Spatial-Temporal Meta-path Guided Explainable Crime Prediction
- Authors: Yuting Sun and Tong Chen and Hongzhi Yin
- Abstract summary: We present a Spatial-Temporal Metapath guided Explainable Crime prediction (STMEC) framework to capture dynamic patterns of crime behaviours.
We show the superiority of STMEC compared with other advancedtemporal models, especially in predicting felonies.
- Score: 40.03641583647572
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Exposure to crime and violence can harm individuals' quality of life and the
economic growth of communities. In light of the rapid development in machine
learning, there is a rise in the need to explore automated solutions to prevent
crimes. With the increasing availability of both fine-grained urban and public
service data, there is a recent surge in fusing such cross-domain information
to facilitate crime prediction. By capturing the information about social
structure, environment, and crime trends, existing machine learning predictive
models have explored the dynamic crime patterns from different views. However,
these approaches mostly convert such multi-source knowledge into implicit and
latent representations (e.g., learned embeddings of districts), making it still
a challenge to investigate the impacts of explicit factors for the occurrences
of crimes behind the scenes. In this paper, we present a Spatial-Temporal
Metapath guided Explainable Crime prediction (STMEC) framework to capture
dynamic patterns of crime behaviours and explicitly characterize how the
environmental and social factors mutually interact to produce the forecasts.
Extensive experiments show the superiority of STMEC compared with other
advanced spatiotemporal models, especially in predicting felonies (e.g.,
robberies and assaults with dangerous weapons).
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