TL;DR
This paper introduces JPLTD, a novel method combining joint projection learning and tensor decomposition to improve incomplete multi-view clustering by reducing noise and redundancy, and capturing high-order view correlations.
Contribution
It proposes a new approach that projects high-dimensional data into a lower-dimensional space and uses tensor decomposition to robustly model multi-view similarities, addressing noise and incompleteness.
Findings
JPLTD outperforms state-of-the-art methods on benchmark datasets.
The method effectively reduces feature redundancy and noise.
High-order correlations across views are successfully captured.
Abstract
Incomplete multi-view clustering (IMVC) has received increasing attention since it is often that some views of samples are incomplete in reality. Most existing methods learn similarity subgraphs from original incomplete multi-view data and seek complete graphs by exploring the incomplete subgraphs of each view for spectral clustering. However, the graphs constructed on the original high-dimensional data may be suboptimal due to feature redundancy and noise. Besides, previous methods generally ignored the graph noise caused by the inter-class and intra-class structure variation during the transformation of incomplete graphs and complete graphs. To address these problems, we propose a novel Joint Projection Learning and Tensor Decomposition Based method (JPLTD) for IMVC. Specifically, to alleviate the influence of redundant features and noise in high-dimensional data, JPLTD introduces an…
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