聚类分析
计算机科学
图形
理论计算机科学
聚类系数
数据挖掘
算法
图的强度
图形属性
空图形
格图
电压图
道德图形
滤波器(信号处理)
图论
人工智能
数学
功率图分析
蝴蝶图
推荐系统
模式识别(心理学)
作者
Penglei Wang,Jitao Lu,Danyang Wu,Rong Wang,feiping Nie
标识
DOI:10.1109/tpami.2026.3655829
摘要
Recently, Multi-View Graph Clustering (MVGC) methods have achieved significant progress, leading to their wide adoption in various applications. However, most MVGC methods merely pursue consistent information by simply fusing multi-view graphs, ignoring the cross-view interactions among them, which limits the ceiling of their performance. To make up for this deficiency, we design a credible cross-view graph enhancement module to explore the credible topological structure, while accomplishing cross-view interactions, to boost clustering performance in multi-view graph scenarios. Besides, we reconsider the graph clustering task from the perspective of graph signal processing. From this novel perspective, we adapt the high-order Graph Trend Filter to reveal the inhomogeneities in graph smoothness levels and further consider the brand-new local preference in MVGC, which provides theoretical guidance for graph clustering. Building on these insights, we propose the Enhanced Graph Trend Filter Clustering (EGTFC) method and present an effective algorithm accompanied by corresponding theoretical analyses to tackle the optimization problem inherent in EGTFC. Finally, substantial experimental results on twelve benchmark datasets demonstrate the effectiveness of our proposals and the superiority over thirteen state-of-the-art MVGC methods.
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