高效长期交通预测的自监督时空瓶颈关注网络

S. Guo, Youfang Lin, Letian Gong, Chenyu Wang, Zeyu Zhou, Zekai Shen, Yiheng Huang, Huaiyu Wan
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引用次数: 1

摘要

在智能交通系统中,准确的长期交通预测有助于管理者和出行者提前做出明智的决策。近年来提出的时空预测模型在短期交通预测中表现良好,但在长期交通预测中存在两个问题。首先,现有的交通预测模型在有效性和效率上的可扩展性不理想,即随着预测时间跨度的扩大,现有模型要么无法捕捉交通数据的长期时空动态,要么以二次计算复杂度为代价获得全局接受域;其次,模型对高质量训练数据的强烈需求与模型的泛化能力之间的矛盾也是我们必须面对的挑战。因此,如何提高数据利用效率值得深思。为了解决长期交通预测问题,促进交通预测模型在实践中的应用,本文提出了一种高效的自监督时空瓶颈关注网络(SSTBAN)。具体而言,SSTBAN采用多任务框架,结合自监督学习器对历史交通数据产生鲁棒的潜在表示,从而提高其泛化性能和预测的鲁棒性。此外,我们还设计了一个时空瓶颈注意机制,在编码全局时空动态的同时降低了计算复杂度。在现实世界九种场景下的交通速度预测和交通流预测等长期交通预测任务中进行的大量实验表明,SSTBAN不仅整体性能最佳,而且具有良好的计算效率和数据利用效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Supervised Spatial-Temporal Bottleneck Attentive Network for Efficient Long-term Traffic Forecasting
In intelligent transportation systems, accurate long-term traffic forecasting is informative for administrators and travelers to make wise decisions in advance. Recently proposed spatial-temporal forecasting models perform well for short-term traffic forecasting, but two challenges hinder their applications for long-term forecasting in practice. Firstly, existing traffic forecasting models do not have satisfactory scalability on effectiveness and efficiency, i.e., as the prediction time spans extend, existing models either cannot capture the long-term spatial-temporal dynamics of traffic data or equip global receptive fields at the cost of quadratic computational complexity. Secondly, the dilemma between the models’ strong appetite for high-quality training data and their generalization ability is also a challenge we have to face. Thus how to improve data utilization efficiency deserves thoughtful thinking. Aiming at solving the long-term traffic forecasting problem and facilitating the deployment of traffic forecasting models in practice, this paper proposes an efficient and effective Self-supervised Spatial-Temporal Bottleneck Attentive Network (SSTBAN). Specifically, SSTBAN follows a multi-task framework by incorporating a self-supervised learner to produce robust latent representations for historical traffic data, so as to improve its generalization performance and robustness for forecasting. Besides, we design a spatial-temporal bottleneck attention mechanism, reducing the computational complexity meanwhile encoding global spatial-temporal dynamics. Extensive experiments on real-world long-term traffic forecasting tasks, including traffic speed forecasting and traffic flow forecasting under nine scenarios, demonstrate that SSTBAN not only achieves the overall best performance but also has good computation efficiency and data utilization efficiency.
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