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TA-STAN: A Deep Spatial-Temporal Attention Learning Framework for Regional Traffic Accident Risk Prediction

机译:TA-STAN:用于区域交通事故风险预测的深时空注意学习框架

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Accurate and effective prediction of future traffic accident risk is critical to reducing the number of traffic accidents, which is also of great help to personal safe travel. In our paper, we choose the real traffic administrative area as the way of regional division rather than grid map, so that our prediction results can be applied to true traffic scenarios directly. Instead of considering traffic flow as a single factor affecting traffic accidents, we divide traffic flow into multiple traffic volumes based on vehicle type. In order to better model the dynamic impact of different traffic flow data and traffic accident data in the local region and global regions for future traffic accident risk prediction, we design a deep learning framework to predict regional Traffic Accident risk that utilizes a Spatial-Temporal Attention Network (named TA-STAN). We also integrate many external environmental factors to further improve the accuracy. We evaluate our TA-STAN model on the real traffic accident dataset in New York City. The experimental results show that TA-STAN outperforms 6 baseline models in 3 evaluation metrics. More importantly, by visualizing the weight of attention, we can reasonably interpret the actual meaning of attention weights, which plays a crucial role in our model.
机译:对未来交通事故风险的准确有效预测对减少交通事故的数量至关重要,这对个人安全旅行也有很大的帮助。在我们的论文中,我们选择真正的交通管理区域作为区域部门而不是网格图,以便我们的预测结果直接应用于真正的流量方案。我们基于车辆类型将业务流量分为多个业务量的单个因素,而不是考虑交通流量。为了更好地模型在当地地区和全球地区的不同交通流量数据和交通事故数据的动态影响,为未来的交通事故风险预测,我们设计深入学习框架,以预测利用空间关注的区域交通意外风险网络(名为TA-STAN)。我们还融入了许多外部环境因素,以进一步提高准确性。我们在纽约市的真正交通事故数据集中评估我们的TA-STAN模型。实验结果表明,TA-STAN在3个评估度量中优于6个基线模型。更重要的是,通过可视化注意力,我们可以合理地解释注意力重量的实际意义,这在我们的模型中起着至关重要的作用。

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