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Research Article | Open Access | Online First

Pre-Training Location Representations via Spatial-Temporal Trajectory Subgraph Contrastive Learning

Department of Computer Science and Technology, Jilin University, Changchun 130300, China
China Mobile Communications Corporation Jilin Co., Ltd., Changchun 130300, China
JD iCity, Beijing 100000, China
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Abstract

Location representations from people’s location-based service data are important and beneficial for urban downstream tasks. Locations usually have complex spatial-temporal contextual semantics, meaning that the same location has variable functionalities in different trajectories. Existing methods are mostly based on sequence or graph, where the former captures accurate temporal but limited spatial information (one trajectory), while the latter obtains a global spatial perspective (upstream and downstream nodes) but ignores the temporal information. Furthermore, the frequencies of visited locations are long-tail distributed, which is disadvantageous for infrequently visited locations. To that end, we propose a spatial-temporal trajectory subgraph contrastive learning framework entitled ST-TGCL, integrating comprehensive spatial-temporal information and relieving the long-tail issue with contrastive learning. Specifically, we construct contrastive trajectory subgraph pairs to stably learn variable functionalities and increase training opportunities for infrequently visited locations. To capture spatial-temporal contextual semantics, we design a trajectory network that formulates trajectories and a trajectory graph convolution network, which has the strengths of both sequence-based and graph-based models. Finally, we apply the location representations for downstream tasks to demonstrate our framework’s effectiveness and generalization. ST-TGCL is evaluated over real-world datasets, and the results demonstrate that our framework significantly outperforms existing methods in location representation learning.

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Tsinghua Science and Technology

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Cite this article:
Gao H, Yang F, Zhang X, et al. Pre-Training Location Representations via Spatial-Temporal Trajectory Subgraph Contrastive Learning. Tsinghua Science and Technology, 2026, https://doi.org/10.26599/TST.2025.9010061

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Received: 04 July 2024
Revised: 03 September 2024
Accepted: 02 April 2025
Published: 14 July 2026
© The author(s) 2026.

The articles published in this open access journal are distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/).