重新审视城市交通事故风险预测:区域性、邻近性、相似性和稀疏性

Minxiao Chen, Haitao Yuan, Nan Jiang, Zhifeng Bao, Shangguang Wang
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引用次数: 0

摘要

交通事故对人类健康和财产安全构成重大风险。因此,为了预防交通事故,预测交通事故风险越来越受到人们的关注。我们认为,一个理想的预测解决方案应能适应交通事故的复杂性。特别是,它应充分考虑区域背景,准确捕捉空间接近性和语义相似性,并有效解决交通事故稀少的问题。然而,这些因素往往被忽视或难以纳入。本文提出了一种新颖的多粒度层次时空网络。首先,我们创新性地纳入了遥感数据,促进了多粒度层次结构的建立和区域背景的理解。我们构建了多个高级风险预测任务,以增强模型应对稀疏性的能力。随后,为了捕捉空间接近性和语义相似性,对区域特征和多视图进行编码处理,提炼出有效的表征。此外,我们还提出了信息传递和自适应时间关注模块,该模块可连接不同粒度,动态捕捉交通事故模式中固有的时间相关性。最后,考虑到预测目的的复杂性,我们设计了一个多变量分层损失函数。在两个真实数据集上的广泛实验验证了我们的模型优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Urban Traffic Accident Risk Prediction Revisited: Regionality, Proximity, Similarity and Sparsity
Traffic accidents pose a significant risk to human health and property safety. Therefore, to prevent traffic accidents, predicting their risks has garnered growing interest. We argue that a desired prediction solution should demonstrate resilience to the complexity of traffic accidents. In particular, it should adequately consider the regional background, accurately capture both spatial proximity and semantic similarity, and effectively address the sparsity of traffic accidents. However, these factors are often overlooked or difficult to incorporate. In this paper, we propose a novel multi-granularity hierarchical spatio-temporal network. Initially, we innovate by incorporating remote sensing data, facilitating the creation of hierarchical multi-granularity structure and the comprehension of regional background. We construct multiple high-level risk prediction tasks to enhance model's ability to cope with sparsity. Subsequently, to capture both spatial proximity and semantic similarity, region feature and multi-view graph undergo encoding processes to distill effective representations. Additionally, we propose message passing and adaptive temporal attention module that bridges different granularities and dynamically captures time correlations inherent in traffic accident patterns. At last, a multivariate hierarchical loss function is devised considering the complexity of the prediction purpose. Extensive experiments on two real datasets verify the superiority of our model against the state-of-the-art methods.
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