Scalable Attribute-Missing Graph Clustering via Neighborhood Differentiation
Yaowen Hu, Wenxuan Tu, Yue Liu, Xinhang Wan, Junyi Yan, Taichun Zhou, Xinwang Liu

TL;DR
This paper introduces CMV-ND, a scalable graph clustering method that handles large-scale, attribute-missing graphs by creating multiple non-redundant neighborhood views, improving clustering performance.
Contribution
The paper proposes a novel neighborhood differentiation strategy and a multi-view framework for scalable, attribute-missing graph clustering, enhancing existing methods.
Findings
Significant performance improvements on six graph datasets.
Effective handling of attribute-missing and large-scale graphs.
Compatibility with various existing clustering methods.
Abstract
Deep graph clustering (DGC), which aims to unsupervisedly separate the nodes in an attribute graph into different clusters, has seen substantial potential in various industrial scenarios like community detection and recommendation. However, the real-world attribute graphs, e.g., social networks interactions, are usually large-scale and attribute-missing. To solve these two problems, we propose a novel DGC method termed \underline{\textbf{C}}omplementary \underline{\textbf{M}}ulti-\underline{\textbf{V}}iew \underline{\textbf{N}}eighborhood \underline{\textbf{D}}ifferentiation (\textit{CMV-ND}), which preprocesses graph structural information into multiple views in a complete but non-redundant manner. First, to ensure completeness of the structural information, we propose a recursive neighborhood search that recursively explores the local structure of the graph by completely expanding…
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