Low Rank Correlation Representation and Clustering
Author(s) -
Wenyun Gao,
Sheng Dai,
Stanley Ebhohimhen Abhadiomhen,
Wei He,
Xinghui Yin
Publication year - 2021
Publication title -
scientific programming
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.269
H-Index - 36
eISSN - 1875-919X
pISSN - 1058-9244
DOI - 10.1155/2021/6639582
Subject(s) - pattern recognition (psychology) , rank (graph theory) , representation (politics) , spectral clustering , artificial intelligence , cluster analysis , computer science , low rank approximation , subspace topology , matrix (chemical analysis) , similarity (geometry) , constraint (computer aided design) , laplacian matrix , mathematics , graph , theoretical computer science , image (mathematics) , combinatorics , mathematical analysis , materials science , geometry , hankel matrix , politics , political science , law , composite material
Correlation learning is a technique utilized to find a common representation in cross-domain and multiview datasets. However, most existing methods are not robust enough to handle noisy data. As such, the common representation matrix learned could be influenced easily by noisy samples inherent in different instances of the data. In this paper, we propose a novel correlation learning method based on a low-rank representation, which learns a common representation between two instances of data in a latent subspace. Specifically, we begin by learning a low-rank representation matrix and an orthogonal rotation matrix to handle the noisy samples in one instance of the data so that a second instance of the data can linearly reconstruct the low-rank representation. Our method then finds a similarity matrix that approximates the common low-rank representationmatrix much better such that a rank constraint on the Laplacian matrix would reveal the clustering structure explicitly without any spectral postprocessing. Extensive experimental results on ORL, Yale, Coil-20, Caltech 101-20, and UCI digits datasets demonstrate that our method has superior performance than other state-of-the-art compared methods in six evaluation metrics.
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