Capturing Temporal Node Evolution via Self-supervised Learning: A New Perspective on Dynamic Graph Learning

Lingwen Liu, Guangqi Wen, Peng Cao, Jinzhu Yang, Weiping Li, Osmar R. Zaiane
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Abstract

Dynamic graphs play an important role in many fields like social relationship analysis, recommender systems and medical science, as graphs evolve over time. It is fundamental to capture the evolution patterns for dynamic graphs. Existing works mostly focus on constraining the temporal smoothness between neighbor snap-shots, however, fail to capture sharp shifts, which can be beneficial for graph dynamics embedding. To solve it, we assume the evolution of dynamic graph nodes can be split into temporal shift embedding and temporal consistency embedding. Thus, we propose the Self-supervised Temporal-aware Dynamic Graph representation Learning framework (STDGL) for disentangling the temporal shift embedding from temporal consistency embedding via a well-designed auxiliary task from the perspectives of both node local and global connectivity modeling in a self-supervised manner, further enhancing the learning of interpretable graph representations and improving the performance of various downstream tasks. Extensive experiments on link prediction, edge classification and node classification tasks demonstrate STDGL successfully learns the disentan-gled temporal shift and consistency representations. Furthermore, the results indicate significant improvements in our STDGL over the state-of-the-art methods, and appealing interpretability and transferability owing to the disentangled node representations.
通过自我监督学习捕捉时间节点演变:动态图学习的新视角
动态图在社会关系分析、推荐系统和医学科学等许多领域发挥着重要作用,因为图会随着时间的推移而演变。捕捉动态图的演化模式至关重要。现有的研究大多侧重于限制相邻快照之间的时间平滑性,但却无法捕捉对图动态嵌入有益的急剧变化。为了解决这个问题,我们假定动态图节点的演化可以分为时间偏移嵌入和时间一致性嵌入。因此,我们提出了自监督时间感知动态图表征学习框架(Self-supervised Temporal-aware Dynamic Graph representation Learning framework,简称 STDGL),通过精心设计的辅助任务,从节点局部和全局连通性建模的角度,以自监督的方式将时间偏移嵌入与时间一致性嵌入分离开来,进一步增强了可解释图表征的学习能力,提高了各种下游任务的性能。在链接预测、边缘分类和节点分类任务上的大量实验证明,STDGL 成功地学习了分解的时移和一致性表示。此外,实验结果表明,与最先进的方法相比,我们的 STDGL 有了显著的改进,而且由于采用了分解节点表示法,其可解释性和可移植性也极具吸引力。
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