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Main Authors: Xing, Xiangru, Li, Yan, Wang, Xin, Chen, Huangyue, Xiu, Xianchao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.10972
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author Xing, Xiangru
Li, Yan
Wang, Xin
Chen, Huangyue
Xiu, Xianchao
author_facet Xing, Xiangru
Li, Yan
Wang, Xin
Chen, Huangyue
Xiu, Xianchao
contents Multi-view clustering leverages consistent and complementary information across multiple views to provide more comprehensive insights than single-view analysis. However, the heterogeneity and redundancy of multi-view data pose significant challenges to the existing clustering techniques. To tackle these challenges effectively, this paper proposes a novel multi-view fusion regularized clustering method with adaptive group sparsity, enabling discriminative clustering while capturing informative features. Technically, for heterogeneous multi-view data with mixed-type feature sets, different losses or divergence metrics are considered with a joint fusion penalty to obtain consistent cluster structures. Moreover, the non-convex group sparsity consisting of inter-group sparsity and intra-group sparsity is utilized to eliminate redundant features, thereby enhancing the robustness. Furthermore, we develop an effective alternating direction method of multipliers (ADMM), where all subproblems can be solved in closed form. Extensive numerical experiments on real data validate the superior performance of our presented method in clustering accuracy and feature selection.
format Preprint
id arxiv_https___arxiv_org_abs_2501_10972
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-View Clustering Meets Heterogenous Data: A Fusion Regularized Method
Xing, Xiangru
Li, Yan
Wang, Xin
Chen, Huangyue
Xiu, Xianchao
Optimization and Control
Multi-view clustering leverages consistent and complementary information across multiple views to provide more comprehensive insights than single-view analysis. However, the heterogeneity and redundancy of multi-view data pose significant challenges to the existing clustering techniques. To tackle these challenges effectively, this paper proposes a novel multi-view fusion regularized clustering method with adaptive group sparsity, enabling discriminative clustering while capturing informative features. Technically, for heterogeneous multi-view data with mixed-type feature sets, different losses or divergence metrics are considered with a joint fusion penalty to obtain consistent cluster structures. Moreover, the non-convex group sparsity consisting of inter-group sparsity and intra-group sparsity is utilized to eliminate redundant features, thereby enhancing the robustness. Furthermore, we develop an effective alternating direction method of multipliers (ADMM), where all subproblems can be solved in closed form. Extensive numerical experiments on real data validate the superior performance of our presented method in clustering accuracy and feature selection.
title Multi-View Clustering Meets Heterogenous Data: A Fusion Regularized Method
topic Optimization and Control
url https://arxiv.org/abs/2501.10972