基于注意机制的GCN和LSTM混合结构犯罪预测

CONVERTER Pub Date : 2021-01-01 DOI:10.17762/converter.132
Jinming Hu
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引用次数: 1

摘要

全球化是经济繁荣的主要因素。同时,由于跨境通信频繁,也刺激了犯罪手段的发展。随着警务工作大数据和预测系统的完善,建立高效的犯罪预测模型,使警务部门能够更准确地打击犯罪活动,成为一个新的研究领域。此外,该模式将非常有利于警察部队的指挥调度,从而提高工作效率。本文提出了一种结合长短期记忆网络(LSTM)和图卷积网络(GCN)预测犯罪率的组合模型,并利用注意机制对实验结果进行改进。通过提取犯罪的时空特征,增加典型特征的比例,不仅可以预测犯罪数量,还可以检测各区域的犯罪风险程度。对美国波士顿约三年的犯罪数据进行滚动预测,结果表明该模型具有较好的预测效果。
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A Hybrid GCN and LSTM Structure Based on Attention Mechanism for Crime Prediction
Globalization has been the major contributor to economy boom. While at the same time, it has stimulated the development of crime method as frequent cross-border communication allowed. With the improvement in big data and prediction system of policing work, it has become a new research field to establish an efficient crime prediction model, by which police departments could clamp down on criminal activities more accurately. Besides, this model will be quite beneficial for commanding and dispatching police force thus to improve work efficiency. This paper proposes a combination model, which uses Long Short-Term Memory Network (LSTM) and Graph Convolutional Network (GCN) to predict crime rate and takes advantage of the Attention mechanism to improve the experimental result. By extracting the spatio-temporal characteristics of crimes and increasing the proportion of typical feature, it can not only predict crime quantity, but also detect the degree of crime risk in each region. A rolling forecast of crime data for about three years in the Boston of the United States shows that our model has good prediction performance.
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