Multi-View Spectral Clustering via Structured Low-Rank Matrix Factorization
Yang Wang, Lin Wu

TL;DR
This paper introduces a structured low-rank matrix factorization approach for multi-view spectral clustering, enhancing flexibility and agreement among views by capturing latent clustering structures and preserving local manifold information.
Contribution
It proposes a novel structured low-rank representation with an iterative agreement strategy, improving multi-view clustering by capturing flexible local structures and latent data-cluster representations.
Findings
Outperforms state-of-the-art methods on real-world datasets.
Effectively captures flexible local manifold structures.
Demonstrates superior clustering accuracy and robustness.
Abstract
Multi-view data clustering attracts more attention than their single view counterparts due to the fact that leveraging multiple independent and complementary information from multi-view feature spaces outperforms the single one. Multi-view Spectral Clustering aims at yielding the data partition agreement over their local manifold structures by seeking eigenvalue-eigenvector decompositions. However, as we observed, such classical paradigm still suffers from (1) overlooking the flexible local manifold structure, caused by (2) enforcing the low-rank data correlation agreement among all views; worse still, (3) LRR is not intuitively flexible to capture the latent data clustering structures. In this paper, we present the structured LRR by factorizing into the latent low-dimensional data-cluster representations, which characterize the data clustering structure for each view. Upon such…
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Taxonomy
MethodsSpectral Clustering
