论文标题
在动态图上可学习的光谱小波以捕获全局互动
Learnable Spectral Wavelets on Dynamic Graphs to Capture Global Interactions
论文作者
论文摘要
在这种情况下静态方法表现出有限的性能,研究人员的注意力(动态)图引起了人们的注意。现有的动态图方法通过本地邻域聚集来学习空间特征,这本质上仅捕获低通信号和本地交互。在这项工作中,我们超越了当前的方法,以合并全局特征,以有效地学习动态发展的图表。我们建议通过捕获动态图的光谱来做到这一点。由于学习图谱的静态方法不会考虑随着时间的推移而演变的频谱演变的历史,因此我们提出了一种新的方法来学习图形小波以捕获这种不断发展的光谱。此外,我们提出了一个框架,将这些可学习的小波的形式集成到充分的空间特征中,以结合局部和全局相互作用。八个标准数据集的实验表明,在动态图的各种任务上,我们的方法显着优于相关的方法。
Learning on evolving(dynamic) graphs has caught the attention of researchers as static methods exhibit limited performance in this setting. The existing methods for dynamic graphs learn spatial features by local neighborhood aggregation, which essentially only captures the low pass signals and local interactions. In this work, we go beyond current approaches to incorporate global features for effectively learning representations of a dynamically evolving graph. We propose to do so by capturing the spectrum of the dynamic graph. Since static methods to learn the graph spectrum would not consider the history of the evolution of the spectrum as the graph evolves with time, we propose a novel approach to learn the graph wavelets to capture this evolving spectra. Further, we propose a framework that integrates the dynamically captured spectra in the form of these learnable wavelets into spatial features for incorporating local and global interactions. Experiments on eight standard datasets show that our method significantly outperforms related methods on various tasks for dynamic graphs.