Multi-View Spectral Clustering via Structured Low-Rank Matrix Factorization

09/05/2017
by   Yang Wang, et al.
0

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 representation, (b) the laplacian regularizer is imposed to be capable of preserving the flexible local manifold structure for each view. (c) We present an iterative multi-view agreement strategy by minimizing the divergence objective among all factorized latent data-cluster representations during each iteration of optimization process, where such latent representation from each view serves to regulate those from other views, such intuitive process iteratively coordinates all views to be agreeable. (d) We remark that such data-cluster representation can flexibly encode the data clustering structure from any view with adaptive input cluster number. To this end, (e) a novel non-convex objective function is proposed via the efficient alternating minimization strategy. The complexity analysis are also presented. The extensive experiments conducted against the real-world multi-view datasets demonstrate the superiority over state-of-the-arts.

READ FULL TEXT

page 2

page 9

page 10

research
08/19/2016

Iterative Views Agreement: An Iterative Low-Rank based Structured Optimization Method to Multi-View Spectral Clustering

Multi-view spectral clustering, which aims at yielding an agreement or c...
research
08/04/2017

Beyond Low-Rank Representations: Orthogonal Clustering Basis Reconstruction with Optimized Graph Structure for Multi-view Spectral Clustering

Low-Rank Representation (LRR) is arguably one of the most powerful parad...
research
08/25/2022

Adaptively-weighted Integral Space for Fast Multiview Clustering

Multiview clustering has been extensively studied to take advantage of m...
research
03/21/2019

Latent Simplex Position Model: High Dimensional Multi-view Clustering with Uncertainty Quantification

High dimensional data often contain multiple facets, and several cluster...
research
09/16/2019

Multi-graph Fusion for Multi-view Spectral Clustering

A panoply of multi-view clustering algorithms has been developed to deal...
research
07/23/2022

Tensor-based Multi-view Spectral Clustering via Shared Latent Space

Multi-view Spectral Clustering (MvSC) attracts increasing attention due ...
research
09/07/2020

Learning Inter- and Intra-manifolds for Matrix Factorization-based Multi-Aspect Data Clustering

Clustering on the data with multiple aspects, such as multi-view or mult...

Please sign up or login with your details

Forgot password? Click here to reset