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Explainable Trajectory Representation through Dictionary Learning

Published: 22 December 2023 Publication History

Abstract

Trajectory representation learning on a network enhances our understanding of vehicular traffic patterns and benefits numerous downstream applications. Existing approaches using classic machine learning or deep learning embed trajectories as dense vectors, which lack interpretability and are inefficient to store and analyze in downstream tasks. In this paper, an explainable trajectory representation learning framework through dictionary learning is proposed. Given a collection of trajectories on a network, it extracts a compact dictionary of commonly used subpaths called "pathlets", which optimally reconstruct each trajectory by simple concatenations. The resulting representation is naturally sparse and encodes strong spatial semantics. Theoretical analysis of our proposed algorithm is conducted to provide a probabilistic bound on the estimation error of the optimal dictionary. A hierarchical dictionary learning scheme is also proposed to ensure the algorithm's scalability on large networks, leading to a multi-scale trajectory representation. Our framework is evaluated on two large-scale real-world taxi datasets. Compared to previous work, the dictionary learned by our method is more compact and has better reconstruction rate for new trajectories. We also demonstrate the promising performance of this method in downstream tasks including trip time prediction task and data compression.

References

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J. Zou, Y. Cui, F. Wan, Q. Ye, and J. Jiao, "A cluster specific latent dirichlet allocation model for trajectory clustering in crowded videos," in 2014 IEEE International Conference on Image Processing (ICIP), Oct. 2014, pp. 2348--2352.
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    cover image ACM Conferences
    SIGSPATIAL '23: Proceedings of the 31st ACM International Conference on Advances in Geographic Information Systems
    November 2023
    686 pages
    ISBN:9798400701689
    DOI:10.1145/3589132
    This work is licensed under a Creative Commons Attribution-ShareAlike International 4.0 License.

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    New York, NY, United States

    Publication History

    Published: 22 December 2023

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    Author Tags

    1. trajectory representation learning
    2. hierarchical pathlet learning

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    • Short-paper

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    • Tsinghua SIGS Scientific Research Start-up Fund

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    Overall Acceptance Rate 257 of 1,238 submissions, 21%

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