LGSep 25, 2023

A Novel Approach for Effective Multi-View Clustering with Information-Theoretic Perspective

arXiv:2309.13989v155 citationsh-index: 35
Originality Incremental advance
AI Analysis

This work addresses redundancy issues in multi-view clustering for data analysis applications, presenting an incremental improvement over existing methods.

The paper tackles the problem of redundancy in multi-view clustering by proposing SUMVC, a method that enhances consistent information and minimizes unnecessary information across views, achieving superior performance on multiple datasets.

Multi-view clustering (MVC) is a popular technique for improving clustering performance using various data sources. However, existing methods primarily focus on acquiring consistent information while often neglecting the issue of redundancy across multiple views. This study presents a new approach called Sufficient Multi-View Clustering (SUMVC) that examines the multi-view clustering framework from an information-theoretic standpoint. Our proposed method consists of two parts. Firstly, we develop a simple and reliable multi-view clustering method SCMVC (simple consistent multi-view clustering) that employs variational analysis to generate consistent information. Secondly, we propose a sufficient representation lower bound to enhance consistent information and minimise unnecessary information among views. The proposed SUMVC method offers a promising solution to the problem of multi-view clustering and provides a new perspective for analyzing multi-view data. To verify the effectiveness of our model, we conducted a theoretical analysis based on the Bayes Error Rate, and experiments on multiple multi-view datasets demonstrate the superior performance of SUMVC.

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