TL;DR
This paper introduces LSIMVC, a novel multi-view clustering method that effectively handles incomplete data with arbitrary missing views by learning sparse, structured, and local graph embedded consensus representations.
Contribution
The proposed LSIMVC method uniquely integrates sparse regularization, local graph embedding, and adaptive weighting to improve clustering on incomplete multi-view data, addressing limitations of prior approaches.
Findings
Outperforms state-of-the-art IMC methods on six datasets.
Effectively handles arbitrary missing views and data imbalance.
Learns structured consensus representations via local graph embedding.
Abstract
Incomplete multi-view clustering, which aims to solve the clustering problem on the incomplete multi-view data with partial view missing, has received more and more attention in recent years. Although numerous methods have been developed, most of the methods either cannot flexibly handle the incomplete multi-view data with arbitrary missing views or do not consider the negative factor of information imbalance among views. Moreover, some methods do not fully explore the local structure of all incomplete views. To tackle these problems, this paper proposes a simple but effective method, named localized sparse incomplete multi-view clustering (LSIMVC). Different from the existing methods, LSIMVC intends to learn a sparse and structured consensus latent representation from the incomplete multi-view data by optimizing a sparse regularized and novel graph embedded multi-view matrix…
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