Multi-view graph clustering (MGC) methods are increasingly being studied due to the explosion of multi-view data with graph structural information. The critical point of MGC is to better utilize the view-specific and view-common information in features and graphs of multiple views. However, existing works have an inherent limitation that they are unable to concurrently utilize the consensus graph information across multiple graphs and the view-specific feature information. To address this issue, we propose Variational Graph Generator for Multi-View Graph Clustering (VGMGC). Specifically, a novel variational graph generator is proposed to extract common information among multiple graphs. This generator infers a reliable variational consensus graph based on a priori assumption over multiple graphs. Then a simple yet effective graph encoder in conjunction with the multi-view clustering objective is presented to learn the desired graph embeddings for clustering, which embeds the inferred view-common graph and view-specific graphs together with features. Finally, theoretical results illustrate the rationality of VGMGC by analyzing the uncertainty of the inferred consensus graph with information bottleneck principle. Extensive experiments demonstrate the superior performance of our VGMGC over SOTAs.
翻译:由于多视图数据与图形结构信息的爆炸性,多视图图组(MGC)方法正在越来越多地研究。MGC的关键点是更好地利用多个视图的特征和图形中的特定视图和共同视图信息。然而,现有工作固有的局限性是,它们无法同时利用多图表和特定视图特征信息中的一致图形信息。为了解决这一问题,我们提议多视图图组(VGMGC)采用变异图形生成器。具体地说,提议了一个新的变异图形生成器,以在多个图形中提取共同信息。该生成器根据多个图形的先验假设推断出一个可靠的变异共识图形。然后,提出一个简单而有效的图形编码器,与多视图组群目标相结合,以学习组合所需的图形嵌入式图形,其中嵌入了假设的视图通用图表和特定视图图形以及特征。最后,理论结果显示VGMGC的合理性,方法是用信息瓶颈原则分析推断的共识图的不确定性。广泛的实验表明我们VGGGC相对于SOTA的优异性表现。