Tensor-based Graph Learning with Consistency and Specificity for Multi-view Clustering
Long Shi, Lei Cao, Yunshan Ye, Yu Zhao, Badong Chen

TL;DR
This paper introduces a tensor-based multi-view graph learning framework that captures intrinsic data structures and distinguishes between common and view-specific information, effectively reducing noise influence for improved clustering.
Contribution
It proposes a novel tensor-based approach using pseudo-Stiefel manifold distance and tensor SVD to enhance multi-view graph learning by considering both consistency and specificity, and eliminating noise.
Findings
Outperforms existing methods on six datasets
Effectively captures high-order correlations in data
Reduces noise impact in multi-view clustering
Abstract
In the context of multi-view clustering, graph learning is recognized as a crucial technique, which generally involves constructing an adaptive neighbor graph based on probabilistic neighbors, and then learning a consensus graph for clustering. However, it is worth noting that these graph learning methods encounter two significant limitations. Firstly, they often rely on Euclidean distance to measure similarity when constructing the adaptive neighbor graph, which proves inadequate in capturing the intrinsic structure among data points in practice, particularly for high-dimensional data. Secondly, most of these methods focus solely on consensus graph, ignoring unique information from each view. Although a few graph-based studies have considered using specific information as well, the modelling approach employed does not exclude the noise impact from the common or specific components. To…
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Taxonomy
TopicsTensor decomposition and applications · Brain Tumor Detection and Classification · Human Pose and Action Recognition
MethodsFocus
