The recent years have seen a surge of interest in spectral-based methods and kernel-based methods for machine learning and data mining. Despite the significant research, these methods remain only loosely related. In this paper, we give theoretically an explicit relation between spectral clustering and weighted kernel principal component analysis (WKPCA). We show that spectral clustering is not only a method for data clustering, but also for feature extraction. We are then able to reinterpret the spectral clustering algorithm in terms of WKPCA and propose our spectral feature analysis (SFA) method. The spectral features extracted by SFA can capture the distinguishing information of data from different classes effectively. Finally some experi...
Abstract — Recent work has revealed a close connection between certain information theoretic diverge...
© 2015 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Spectral clustering is a powerful technique in clustering specially when the structure of data is no...
Spectral methods, as an unsupervised technique, have been used with success in data mining such as L...
© 2016 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Abstract—A new formulation for multiway spectral clustering is proposed. This method corresponds to ...
The spectral clustering algorithm is an algorithm for putting N data points in an I-dimensional spac...
We propose a spectral clustering method based on local principal components analysis (PCA). After pe...
iAbstract Clustering is an unsupervised pattern recognition technique for finding nat-ural groups in...
We propose a spectral clustering method based on local principal components analysis (PCA). After pe...
Abstract- The spectral clustering algorithm is an algorithm for placing N data points in an I-dimens...
We address two issues that are fundamental to the analysis of naturally-occurring datasets: how to e...
Clustering algorithms are a useful tool to explore data structures and have been employed in many di...
Spectral clustering methods were proposed recently which rely on the eigenvalue decomposition of an ...
Abstract — Recent work has revealed a close connection between certain information theoretic diverge...
© 2015 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Spectral clustering is a powerful technique in clustering specially when the structure of data is no...
Spectral methods, as an unsupervised technique, have been used with success in data mining such as L...
© 2016 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Abstract—A new formulation for multiway spectral clustering is proposed. This method corresponds to ...
The spectral clustering algorithm is an algorithm for putting N data points in an I-dimensional spac...
We propose a spectral clustering method based on local principal components analysis (PCA). After pe...
iAbstract Clustering is an unsupervised pattern recognition technique for finding nat-ural groups in...
We propose a spectral clustering method based on local principal components analysis (PCA). After pe...
Abstract- The spectral clustering algorithm is an algorithm for placing N data points in an I-dimens...
We address two issues that are fundamental to the analysis of naturally-occurring datasets: how to e...
Clustering algorithms are a useful tool to explore data structures and have been employed in many di...
Spectral clustering methods were proposed recently which rely on the eigenvalue decomposition of an ...
Abstract — Recent work has revealed a close connection between certain information theoretic diverge...
© 2015 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...