Semantics and Geography Aware Hierarchical Learning for Sequential Crime Prediction

Kaixi Hu, Lin Li, Xiaohui Tao, Jianwei Zhang

Published: 01 Jan 2024, Last Modified: 15 Jan 2026IEEE Signal Processing LettersEveryoneRevisionsCC BY-SA 4.0
Abstract: Sequential Crime Prediction (SCP) aims to analyze future criminal intents within historical event transitions and predict next crime event. A problem lies in the correlations among different event features (e.g., time, locations, and categories), posing challenges to capture a comprehensive criminal intent. Most existing methods are hard to fully exploit event descriptions and locations in raw crime records to model such correlations. To this end, this letter proposes a Semantics and Geography aware hierarchical learning framework (SaGCrime). First, we employ BERT to encode semantic representations from descriptions and a proposed geography encoder to learn geographical representations from exact GPS-based locations, respectively. Then, these representations are fed into a stacked Transformer encoder to learn multi-modal interactive intent representation of next crime event. Experiments on real-world crime datasets show that our SaGCrime achieves relatively 4.70% and 3.64% improvements in terms of NDCG@5, compared with state-of-the-art methods.
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