Boosting Urban Traffic Speed Prediction via Integrating Implicit Spatial
Correlations
- URL: http://arxiv.org/abs/2212.12932v1
- Date: Sun, 25 Dec 2022 16:52:24 GMT
- Title: Boosting Urban Traffic Speed Prediction via Integrating Implicit Spatial
Correlations
- Authors: Dongkun Wang, Wei Fan, Pengyang Wang, Pengfei Wang, Dongjie Wang,
Denghui Zhang, Yanjie Fu
- Abstract summary: Urban traffic speed prediction aims to estimate the future traffic speed for improving the urban transportation services.
We propose a generic model for enabling the current traffic speed prediction methods to preserve implicit spatial correlations.
- Score: 25.944188332715488
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Urban traffic speed prediction aims to estimate the future traffic speed for
improving the urban transportation services. Enormous efforts have been made on
exploiting spatial correlations and temporal dependencies of traffic speed
evolving patterns by leveraging explicit spatial relations (geographical
proximity) through pre-defined geographical structures ({\it e.g.}, region
grids or road networks). While achieving promising results, current traffic
speed prediction methods still suffer from ignoring implicit spatial
correlations (interactions), which cannot be captured by grid/graph
convolutions. To tackle the challenge, we propose a generic model for enabling
the current traffic speed prediction methods to preserve implicit spatial
correlations. Specifically, we first develop a Dual-Transformer architecture,
including a Spatial Transformer and a Temporal Transformer. The Spatial
Transformer automatically learns the implicit spatial correlations across the
road segments beyond the boundary of geographical structures, while the
Temporal Transformer aims to capture the dynamic changing patterns of the
implicit spatial correlations. Then, to further integrate both explicit and
implicit spatial correlations, we propose a distillation-style learning
framework, in which the existing traffic speed prediction methods are
considered as the teacher model, and the proposed Dual-Transformer
architectures are considered as the student model. The extensive experiments
over three real-world datasets indicate significant improvements of our
proposed framework over the existing methods.
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