Semantic-Enhanced Representation Learning for Road Networks with Temporal Dynamics
arxiv(2024)
摘要
In this study, we introduce a novel framework called Toast for learning
general-purpose representations of road networks, along with its advanced
counterpart DyToast, designed to enhance the integration of temporal dynamics
to boost the performance of various time-sensitive downstream tasks.
Specifically, we propose to encode two pivotal semantic characteristics
intrinsic to road networks: traffic patterns and traveling semantics. To
achieve this, we refine the skip-gram module by incorporating auxiliary
objectives aimed at predicting the traffic context associated with a target
road segment. Moreover, we leverage trajectory data and design pre-training
strategies based on Transformer to distill traveling semantics on road
networks. DyToast further augments this framework by employing unified
trigonometric functions characterized by their beneficial properties, enabling
the capture of temporal evolution and dynamic nature of road networks more
effectively. With these proposed techniques, we can obtain representations that
encode multi-faceted aspects of knowledge within road networks, applicable
across both road segment-based applications and trajectory-based applications.
Extensive experiments on two real-world datasets across three tasks demonstrate
that our proposed framework consistently outperforms the state-of-the-art
baselines by a significant margin.
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