Clustering as unsupervised learning method is the mission of dividing data objects into clusters with common characteristics. In the present paper, we introduce an enhanced technique of the existing EPCA data transformation method. Incorporating the kernel function into the EPCA, the input space can be mapped implicitly into a high-dimensional of feature space. Then, the Shannon’s entropy estimated via the inertia provided by the contribution of every mapped object in data is the key measure to determine the optimal extracted features space. Our proposed method performs very well the clustering algorithm of the fast search of clusters’ centers based on the local densities’ computing. Experimental results disclose that the approach is feasi...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
© 2015 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Clustering of data with high dimension and variable densities poses a remarkable challenge to the tr...
Clustering as unsupervised learning method is the mission of dividing data objects into clusters wit...
In order to solve the problem that principal component analysis (PCA) algorithm can??t deal with the...
Several techniques are used for clustering of high-dimensional data. Traditionally, clustering appro...
Kernel entropy component analysis (KECA) is a newly proposed dimensionality reduction (DR) method, w...
Clustering is an unsupervised process to determine which unlabeled objects in a set share interestin...
We introduce Feature Dependent Kernel Entropy Component Analysis (FDKECA) as a new extension to Kern...
In this paper, we introduce an assumption which makes it possible to extend the learn-ing ability of...
k-means algorithm is a popular data clustering algorithm. k-means clustering aims to partition n obs...
Following basic principles of information-theoretic learning, in this paper, we propose a novel appr...
© 2016 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
We propose a new kernel-based data transformation technique. It is founded on the principle of maxim...
Clustering is part of data mining where data mining is a process in which it is used to analyze data...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
© 2015 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Clustering of data with high dimension and variable densities poses a remarkable challenge to the tr...
Clustering as unsupervised learning method is the mission of dividing data objects into clusters wit...
In order to solve the problem that principal component analysis (PCA) algorithm can??t deal with the...
Several techniques are used for clustering of high-dimensional data. Traditionally, clustering appro...
Kernel entropy component analysis (KECA) is a newly proposed dimensionality reduction (DR) method, w...
Clustering is an unsupervised process to determine which unlabeled objects in a set share interestin...
We introduce Feature Dependent Kernel Entropy Component Analysis (FDKECA) as a new extension to Kern...
In this paper, we introduce an assumption which makes it possible to extend the learn-ing ability of...
k-means algorithm is a popular data clustering algorithm. k-means clustering aims to partition n obs...
Following basic principles of information-theoretic learning, in this paper, we propose a novel appr...
© 2016 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
We propose a new kernel-based data transformation technique. It is founded on the principle of maxim...
Clustering is part of data mining where data mining is a process in which it is used to analyze data...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
© 2015 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Clustering of data with high dimension and variable densities poses a remarkable challenge to the tr...