Spatial-Temporal Fusion Graph Neural Networks for Traffic Flow
Forecasting
- URL: http://arxiv.org/abs/2012.09641v2
- Date: Sat, 6 Mar 2021 08:44:45 GMT
- Title: Spatial-Temporal Fusion Graph Neural Networks for Traffic Flow
Forecasting
- Authors: Mengzhang Li, Zhanxing Zhu
- Abstract summary: spatial-temporal data forecasting of traffic flow is a challenging task because of complicated spatial dependencies and dynamical trends of temporal pattern between different roads.
Existing frameworks typically utilize given spatial adjacency graph and sophisticated mechanisms for modeling spatial and temporal correlations.
This paper proposes Spatial-Temporal Fusion Graph Neural Networks (STFGNN) for traffic flow forecasting.
- Score: 35.072979313851235
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Spatial-temporal data forecasting of traffic flow is a challenging task
because of complicated spatial dependencies and dynamical trends of temporal
pattern between different roads. Existing frameworks typically utilize given
spatial adjacency graph and sophisticated mechanisms for modeling spatial and
temporal correlations. However, limited representations of given spatial graph
structure with incomplete adjacent connections may restrict effective
spatial-temporal dependencies learning of those models. To overcome those
limitations, our paper proposes Spatial-Temporal Fusion Graph Neural Networks
(STFGNN) for traffic flow forecasting. SFTGNN could effectively learn hidden
spatial-temporal dependencies by a novel fusion operation of various spatial
and temporal graphs, which is generated by a data-driven method. Meanwhile, by
integrating this fusion graph module and a novel gated convolution module into
a unified layer, SFTGNN could handle long sequences. Experimental results on
several public traffic datasets demonstrate that our method achieves
state-of-the-art performance consistently than other baselines.
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