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Main Authors: Han, Sumin, An, Jisun, Lee, Dongman
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.12882
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author Han, Sumin
An, Jisun
Lee, Dongman
author_facet Han, Sumin
An, Jisun
Lee, Dongman
contents For traffic prediction in transportation services such as car-sharing and ride-hailing, mid-term road traffic prediction (within a few hours) is considered essential. However, the existing road-level traffic prediction has mainly studied how significantly micro traffic events propagate to the adjacent roads in terms of short-term prediction. On the other hand, recent attempts have been made to incorporate regional knowledge such as POIs, road characteristics, and real-time social events to help traffic prediction. However, these studies lack in understandings of different modalities of road-level and region-level spatio-temporal correlations and how to combine such knowledge. This paper proposes a novel method that embeds real-time region-level knowledge using POIs, satellite images, and real-time LTE access traces via a regional spatio-temporal module that consists of dynamic convolution and temporal attention, and conducts bipartite spatial transform attention to convert into road-level knowledge. Then the model ingests this embedded knowledge into a road-level attention-based prediction model. Experimental results on real-world road traffic prediction show that our model outperforms the baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2408_12882
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Spatio-Temporal Road Traffic Prediction using Real-time Regional Knowledge
Han, Sumin
An, Jisun
Lee, Dongman
Artificial Intelligence
For traffic prediction in transportation services such as car-sharing and ride-hailing, mid-term road traffic prediction (within a few hours) is considered essential. However, the existing road-level traffic prediction has mainly studied how significantly micro traffic events propagate to the adjacent roads in terms of short-term prediction. On the other hand, recent attempts have been made to incorporate regional knowledge such as POIs, road characteristics, and real-time social events to help traffic prediction. However, these studies lack in understandings of different modalities of road-level and region-level spatio-temporal correlations and how to combine such knowledge. This paper proposes a novel method that embeds real-time region-level knowledge using POIs, satellite images, and real-time LTE access traces via a regional spatio-temporal module that consists of dynamic convolution and temporal attention, and conducts bipartite spatial transform attention to convert into road-level knowledge. Then the model ingests this embedded knowledge into a road-level attention-based prediction model. Experimental results on real-world road traffic prediction show that our model outperforms the baselines.
title Spatio-Temporal Road Traffic Prediction using Real-time Regional Knowledge
topic Artificial Intelligence
url https://arxiv.org/abs/2408.12882