Dynamic graph representation learning is growing as a trending yet challenging research task owing to the widespread demand for graph data analysis in real world applications. Despite the encouraging performance of many recent works that build upon recurrent neural networks (RNNs) and graph neural networks (GNNs), they fail to explicitly model the impact of edge temporal states on node features over time slices. Additionally, they are challenging to extract global structural features because of the inherent over-smoothing disadvantage of GNNs, which further restricts the performance. In this paper, we propose a recurrent difference graph transformer (RDGT) framework, which firstly assigns the edges in each snapshot with various types and weights to illustrate their specific temporal states explicitly, then a structure-reinforced graph transformer is employed to capture the temporal node representations by a recurrent learning paradigm. Experimental results on four real-world datasets demonstrate the superiority of RDGT for discrete dynamic graph representation learning, as it consistently outperforms competing methods in dynamic link prediction tasks.
翻译:动态图形表示学习作为一项趋势性的研究任务,由于图形数据分析在实际应用中的广泛需求越来越受到关注,但是许多最近的工作,建立在循环神经网络(RNNs)和图神经网络(GNNs)之上,他们未能明确地模拟边时序状态对节点特征在时间切片上的影响。此外,由于GNN的内在平滑缺点,它们很难提取全局结构特征,这进一步限制了表现。在本文中,我们提出了一种循环差异图变换器(RDGT)框架,该框架首先对每个快照中的边进行分配,以明确表示它们的特定时间状态与权重,然后使用结构强化的图变换器通过循环学习范式来捕获时态节点表示。在四个真实数据集上的实验结果表明,RDGT在离散动态图表示学习方面具有优越性,在动态链接预测任务中始终表现优于竞争方法。