One Node One Model: Featuring the Missing-Half for Graph Clustering
Most existing graph clustering methods primarily focus on exploiting topological structure, often neglecting the ``missing-half" node feature information, especially how these features can enhance clustering performance. This issue is further compounded by the challenges associated with high-di...
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Zusammenfassung: | Most existing graph clustering methods primarily focus on exploiting
topological structure, often neglecting the ``missing-half" node feature
information, especially how these features can enhance clustering performance.
This issue is further compounded by the challenges associated with
high-dimensional features. Feature selection in graph clustering is
particularly difficult because it requires simultaneously discovering clusters
and identifying the relevant features for these clusters. To address this gap,
we introduce a novel paradigm called ``one node one model", which builds an
exclusive model for each node and defines the node label as a combination of
predictions for node groups. Specifically, the proposed ``Feature Personalized
Graph Clustering (FPGC)" method identifies cluster-relevant features for each
node using a squeeze-and-excitation block, integrating these features into each
model to form the final representations. Additionally, the concept of feature
cross is developed as a data augmentation technique to learn low-order feature
interactions. Extensive experimental results demonstrate that FPGC outperforms
state-of-the-art clustering methods. Moreover, the plug-and-play nature of our
method provides a versatile solution to enhance GNN-based models from a feature
perspective. |
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DOI: | 10.48550/arxiv.2412.09902 |