核心概念
Traffic forecasting is enhanced by COOL, a model that captures high-order spatio-temporal relationships for accurate predictions.
統計資料
"Experimental results on four popular benchmark datasets demonstrate that our proposed COOL provides state-of-the-art performance compared with the competitive baselines."
引述
"This paper investigates traffic forecasting, which attempts to forecast the future state of traffic based on historical situations."
"Toward this end, this paper proposes Conjoint Spatio-Temporal graph neural network (abbreviated as COOL), which models heterogeneous graphs from prior and posterior information to conjointly capture high-order spatio-temporal relationships."