Advanced Unsupervised Learning: A Comprehensive Overview of Multi-View Clustering Techniques
Abdelmalik Moujahid, Fadi Dornaika

TL;DR
This comprehensive survey reviews over 140 multi-view clustering techniques, categorizing methods, analyzing their strengths and challenges, and discussing future research directions and applications across various domains.
Contribution
It systematically categorizes MVC methods, analyzes their advantages and limitations, and explores emerging trends and practical applications in a detailed, structured manner.
Findings
Categorization of MVC methods into seven groups.
Analysis of strengths, weaknesses, and challenges of each method.
Discussion of future trends and interdisciplinary applications.
Abstract
Machine learning techniques face numerous challenges to achieve optimal performance. These include computational constraints, the limitations of single-view learning algorithms and the complexity of processing large datasets from different domains, sources or views. In this context, multi-view clustering (MVC), a class of unsupervised multi-view learning, emerges as a powerful approach to overcome these challenges. MVC compensates for the shortcomings of single-view methods and provides a richer data representation and effective solutions for a variety of unsupervised learning tasks. In contrast to traditional single-view approaches, the semantically rich nature of multi-view data increases its practical utility despite its inherent complexity. This survey makes a threefold contribution: (1) a systematic categorization of multi-view clustering methods into well-defined groups, including…
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Taxonomy
TopicsFace and Expression Recognition · Advanced Clustering Algorithms Research · Domain Adaptation and Few-Shot Learning
