Spatial-Temporal Graph Contrastive Learning for Urban Traffic Flow Forecasting
Lin Pan,
Qianqian Ren,
Jinbao Li
Abstract:<p>Graph Neural Networks(GNNs) integrating contrastive learning have attracted growing attentions in urban traffic flow forecasting. However, most existing graph contrastive learning works donot perform well in capturing local-global spatial dependencies and designing contrastive learning scheme in both spatial and temporal dimensions. We argue that these works cannot well extract the spatial-temporal features and are easily affected by data noise. In light of these challenges, this paper proposes an inn… Show more
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