Learning congestion propagation behaviors for traffic prediction
Traffic prediction is a challenging task as the traffic flow is influenced by many seasonal, stochastic, and structural factors. In addition, the spatial and temporal distribution of traffic flow can induce direct and indirect congestion propagation patterns. While existing works have attempted to model s...
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sg-ntu-dr.10356-1538572021-12-13T04:41:45Z Learning congestion propagation behaviors for traffic prediction Sun, Yidan He, Peilan Jiang, Guiyuan Lam, Siew-Kei School of Computer Science and Engineering 2021 IEEE International Intelligent Transportation Systems Conference (ITSC) Engineering::Computer science and engineering::Computer applications::Social and behavioral sciences Traffic Prediction Congestion Propagation Deep Learning Traffic prediction is a challenging task as the traffic flow is influenced by many seasonal, stochastic, and structural factors. In addition, the spatial and temporal distribution of traffic flow can induce direct and indirect congestion propagation patterns. While existing works have attempted to model spatial-temporal graphs to capture the spatial correlations and temporal dependencies, they fail to consider congestion propagation behavior among road segments. In this paper, we propose a novel traffic prediction model that takes into account the congestion propagation tendencies to improve prediction accuracy. A novel diffusion graph convolution network model is developed to capture the spatial traffic correlations while considering the congestion propagation behavior. Our model also jointly learns the importance of seasonal traffic speed correlations, road contextual information (structural information), and stochastic factors (external factors) through an attention layer. Experimental results on real-world data-set demonstrate the superiority of our method over state-of-the-art traffic prediction techniques, and confirm the significance of congestion propagation behavior in traffic prediction. National Research Foundation (NRF) Accepted version This research project is supported in part by the National Research Foundation Singapore under its Campus for Research Excellence and Technological Enterprise (CREATE) programme with the Technical University of Munich at TUMCREATE. 2021-12-13T04:41:45Z 2021-12-13T04:41:45Z 2021 Conference Paper Sun, Y., He, P., Jiang, G. & Lam, S. (2021). Learning congestion propagation behaviors for traffic prediction. 2021 IEEE International Intelligent Transportation Systems Conference (ITSC). https://dx.doi.org/10.1109/ITSC48978.2021.9565132 978-1-7281-9142-3 https://hdl.handle.net/10356/153857 10.1109/ITSC48978.2021.9565132 en © 2021 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. The published version is available at: https://doi.org/10.1109/ITSC48978.2021.9565132. application/pdf |
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Engineering::Computer science and engineering::Computer applications::Social and behavioral sciences Traffic Prediction Congestion Propagation Deep Learning Sun, Yidan He, Peilan Jiang, Guiyuan Lam, Siew-Kei Learning congestion propagation behaviors for traffic prediction |
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Traffic prediction is a challenging task as the traffic flow is influenced by many seasonal, stochastic, and structural factors. In addition, the spatial and temporal distribution of traffic flow can induce direct and indirect congestion propagation patterns. While existing works have attempted to model spatial-temporal graphs to capture the spatial correlations and temporal dependencies, they fail to consider congestion propagation behavior among road segments. In this paper, we propose a novel traffic prediction model that takes into account the congestion propagation tendencies to improve prediction accuracy. A novel diffusion graph convolution network model is developed to capture the spatial traffic correlations while considering the congestion propagation behavior. Our model also jointly learns the importance of seasonal traffic speed correlations, road contextual information (structural information), and stochastic factors (external factors) through an attention layer. Experimental results on real-world data-set demonstrate the superiority of our method over state-of-the-art traffic prediction techniques, and confirm the significance of congestion propagation behavior in traffic prediction. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Sun, Yidan He, Peilan Jiang, Guiyuan Lam, Siew-Kei |
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Conference or Workshop Item |
author |
Sun, Yidan He, Peilan Jiang, Guiyuan Lam, Siew-Kei |
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Sun, Yidan |
title |
Learning congestion propagation behaviors for traffic prediction |
title_short |
Learning congestion propagation behaviors for traffic prediction |
title_full |
Learning congestion propagation behaviors for traffic prediction |
title_fullStr |
Learning congestion propagation behaviors for traffic prediction |
title_full_unstemmed |
Learning congestion propagation behaviors for traffic prediction |
title_sort |
learning congestion propagation behaviors for traffic prediction |
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2021 |
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https://hdl.handle.net/10356/153857 |
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1720447115149180928 |