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Main Authors: Ni, Li, Zeng, Shuaikang, Mu, Lin, Lin, Longlong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.09370
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author Ni, Li
Zeng, Shuaikang
Mu, Lin
Lin, Longlong
author_facet Ni, Li
Zeng, Shuaikang
Mu, Lin
Lin, Longlong
contents Contrastive learning has demonstrated strong performance in attributed hypergraph clustering. Typically, existing methods based on contrastive learning first learn node embeddings and then apply clustering algorithms, such as k-means, to these embeddings to obtain the clustering results.However, these methods lack direct clustering supervision, risking the inclusion of clustering-irrelevant information in the learned graph.To this end, we propose a Contrastive learning approach for Attributed Hypergraph Clustering (CAHC), an end-to-end method that simultaneously learns node embeddings and obtains clustering results. CAHC consists of two main steps: representation learning and cluster assignment learning. The former employs a novel contrastive learning approach that incorporates both node-level and hyperedge-level objectives to generate node embeddings.The latter joint embedding and clustering optimization to refine these embeddings by clustering-oriented guidance and obtains clustering results simultaneously.Extensive experimental results demonstrate that CAHC outperforms baselines on eight datasets.
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publishDate 2026
record_format arxiv
spellingShingle From Representation to Clusters: A Contrastive Learning Approach for Attributed Hypergraph Clustering
Ni, Li
Zeng, Shuaikang
Mu, Lin
Lin, Longlong
Machine Learning
Contrastive learning has demonstrated strong performance in attributed hypergraph clustering. Typically, existing methods based on contrastive learning first learn node embeddings and then apply clustering algorithms, such as k-means, to these embeddings to obtain the clustering results.However, these methods lack direct clustering supervision, risking the inclusion of clustering-irrelevant information in the learned graph.To this end, we propose a Contrastive learning approach for Attributed Hypergraph Clustering (CAHC), an end-to-end method that simultaneously learns node embeddings and obtains clustering results. CAHC consists of two main steps: representation learning and cluster assignment learning. The former employs a novel contrastive learning approach that incorporates both node-level and hyperedge-level objectives to generate node embeddings.The latter joint embedding and clustering optimization to refine these embeddings by clustering-oriented guidance and obtains clustering results simultaneously.Extensive experimental results demonstrate that CAHC outperforms baselines on eight datasets.
title From Representation to Clusters: A Contrastive Learning Approach for Attributed Hypergraph Clustering
topic Machine Learning
url https://arxiv.org/abs/2603.09370