Data clustering is the task to group the data samples into certain clusters based on the relationships of samples and structures hidden in data, and it is a fundamental and important topic in data mining and machine learning areas. In the literature, the spectral clustering is one of the most popular approaches and has many variants in recent years. However, the performance of spectral clustering is determined by the affinity matrix, which is usually computed by a predefined model (e.g., Gaussian kernel function) with carefully tuned parameters combination, and may not optimal in practice. In this paper, we propose to consider the observed data clustering as a robust matrix factorization point of view, and learn an affinity matrix simultane...
We propose a novel regularized mixture model for clustering matrix-valued data. The proposed method ...
dimensional data is still a challenge problem. Therefore, obtaining their low-dimensional compact re...
International audienceMany papers pointed out the interest of (co-)clustering both data and features...
© 2017 IEEE. In recent years, various data clustering algorithms have been proposed in the data mini...
Low-rank matrix approximation has been widely used for data subspace clustering and feature represen...
Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Matrix Factorization based methods, e.g., the Concept Factorization (CF) and Nonnegative Matrix Fact...
<p>Data clustering aims to group the data samples into clusters, and has attracted many researchers ...
In order to handle semi-supervised clustering scenarios where only part of the pairwise constraint i...
This paper proposes a one-step spectral clustering method by learning an intrinsic affinity matrix (...
Spectral clustering (SC) methods have been successfully applied to many real-world applications. The...
Data clustering is an important research topic in data mining and signal processing communications. ...
Abstract — Spectral clustering (SC) methods have been suc-cessfully applied to many real-world appli...
Multiple kernel k-means (MKKM) clustering aims to optimally combine a group of pre-specified kernels...
Spectral clustering is a fundamental technique in the field of data mining and information processin...
We propose a novel regularized mixture model for clustering matrix-valued data. The proposed method ...
dimensional data is still a challenge problem. Therefore, obtaining their low-dimensional compact re...
International audienceMany papers pointed out the interest of (co-)clustering both data and features...
© 2017 IEEE. In recent years, various data clustering algorithms have been proposed in the data mini...
Low-rank matrix approximation has been widely used for data subspace clustering and feature represen...
Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Matrix Factorization based methods, e.g., the Concept Factorization (CF) and Nonnegative Matrix Fact...
<p>Data clustering aims to group the data samples into clusters, and has attracted many researchers ...
In order to handle semi-supervised clustering scenarios where only part of the pairwise constraint i...
This paper proposes a one-step spectral clustering method by learning an intrinsic affinity matrix (...
Spectral clustering (SC) methods have been successfully applied to many real-world applications. The...
Data clustering is an important research topic in data mining and signal processing communications. ...
Abstract — Spectral clustering (SC) methods have been suc-cessfully applied to many real-world appli...
Multiple kernel k-means (MKKM) clustering aims to optimally combine a group of pre-specified kernels...
Spectral clustering is a fundamental technique in the field of data mining and information processin...
We propose a novel regularized mixture model for clustering matrix-valued data. The proposed method ...
dimensional data is still a challenge problem. Therefore, obtaining their low-dimensional compact re...
International audienceMany papers pointed out the interest of (co-)clustering both data and features...