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Effective Travel Time Estimation: When Historical Trajectories over Road Networks Matter

Published: 31 May 2020 Publication History

Abstract

In this paper, we study the problem of origin-destination (OD) travel time estimation where the OD input consists of an OD pair and a departure time. We propose a novel neural network based prediction model that fully exploits an important fact neglected by the literature -- for a past OD trip its travel time is usually affiliated with the trajectory it travels along, whereas it does not exist during prediction. At the training phase, our goal is to design novel representations for the OD input and its affiliated trajectory, such that they are close to each other in the latent space. First, we match the OD pairs and their affiliated (historical) trajectories to road networks, and utilize road segment embeddings to represent their spatial properties. Later, we match the timestamps associated with trajectories to time slots and utilize time slot embeddings to represent the temporal properties. Next, we build a temporal graph to capture the weekly and daily periodicity of time slot embeddings. Last, we design an effective encoding to represent the spatial and temporal properties of trajectories. To bind each OD input to its affiliated trajectory, we also encode the OD input into a hidden representation, and make the hidden representation close to the spatio-temporal representation of the trajectory. At the prediction phase, we only use the OD input, get the hidden representation of the OD input, and use it to generate the travel time. Extensive experiments on real datasets show that our method achieves high effectiveness and outperforms existing methods.

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  1. Effective Travel Time Estimation: When Historical Trajectories over Road Networks Matter

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    cover image ACM Conferences
    SIGMOD '20: Proceedings of the 2020 ACM SIGMOD International Conference on Management of Data
    June 2020
    2925 pages
    ISBN:9781450367356
    DOI:10.1145/3318464
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    Publication History

    Published: 31 May 2020

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    Author Tags

    1. OD travel time estimation
    2. road networks
    3. trajectory

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    • NSF of China
    • Huawei
    • ARC

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    SIGMOD/PODS '20
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    Overall Acceptance Rate 785 of 4,003 submissions, 20%

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    • (2024)Fairness-Aware Dynamic Ride-Hailing Matching Based on Reinforcement LearningElectronics10.3390/electronics1304077513:4(775)Online publication date: 16-Feb-2024
    • (2024)Nuhuo: An Effective Estimation Model for Traffic Speed Histogram Imputation on A Road NetworkProceedings of the VLDB Endowment10.14778/3654621.365462817:7(1605-1617)Online publication date: 30-May-2024
    • (2024)Congestion-aware Spatio-Temporal Graph Convolutional Network Based A* Search Algorithm for Fastest Route SearchACM Transactions on Knowledge Discovery from Data10.1145/3657640Online publication date: 11-Apr-2024
    • (2024)TrajRecovery: An Efficient Vehicle Trajectory Recovery Framework based on Urban-Scale Traffic Camera RecordsProceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining10.1145/3637528.3671558(5979-5990)Online publication date: 25-Aug-2024
    • (2024)Spatio-Temporal Trajectory Similarity Measures: A Comprehensive Survey and Quantitative StudyIEEE Transactions on Knowledge and Data Engineering10.1109/TKDE.2023.3323535(1-21)Online publication date: 2024
    • (2024)Multi-Faceted Route Representation Learning for Travel Time EstimationIEEE Transactions on Intelligent Transportation Systems10.1109/TITS.2024.337107125:9(11782-11793)Online publication date: Sep-2024
    • (2024)A Just-In-Time Framework for Continuous Routing2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00350(4600-4613)Online publication date: 13-May-2024
    • (2024)Managing the Future: Route Planning Influence Evaluation in Transportation Systems2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00347(4558-4572)Online publication date: 13-May-2024
    • (2024)Efficient Learning-based Top-k Representative Similar Subtrajectory Query2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00335(4396-4408)Online publication date: 13-May-2024
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