Kernel spectral clustering fits in a constrained optimization framework where the primal problem is expressed in terms of high-dimensional feature maps and the dual problem is expressed in terms of kernel evaluations. An eigenvalue problem is solved at the training stage and projections onto the eigenvectors constitute the clustering model. The formulation allows out-of-sample extensions which are useful for model selection in a learning setting. In this work, we propose a methodology to reveal the hierarchical structure present on the data. During the model selection stage, several clustering model parameters leading to good clusterings can be found. These results are then combined to display the underlying cluster hierarchies where the op...
© 2014 IEEE. For a given data set, exploring their multi-view instances under a clustering framework...
© 2016 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Spectral methods, as an unsupervised technique, have been used with success in data mining such as L...
© 2014 IEEE. In this paper we extend the agglomerative hierarchical kernel spectral clustering (AH-K...
Kernel spectral clustering corresponds to a weighted kernel principal component analysis problem in ...
Kernel spectral clustering corresponds to a weighted kernel principal component analysis problem in ...
Kernel spectral clustering corresponds to a weighted kernel principal component analysis problem in ...
This work outlines a unified formulation to represent spectral approaches for both dimensionality re...
Abstract—A new formulation for multiway spectral clustering is proposed. This method corresponds to ...
Clustering algorithms are a useful tool to explore data structures and have been employed in many di...
Abstract. This article proposes a first analysis of kernel spectral clustering methods in the regime...
ABSTRACT Clustering algorithms are a useful tool to explore data structures and have been employed ...
© 2015 IEEE. This paper introduces a methodology to incorporate the label information in discovering...
International audienceThis article proposes a first analysis of kernel spectral clustering methods i...
Spectral clustering refers to a class of techniques which rely on the eigenstructure of a similarity...
© 2014 IEEE. For a given data set, exploring their multi-view instances under a clustering framework...
© 2016 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Spectral methods, as an unsupervised technique, have been used with success in data mining such as L...
© 2014 IEEE. In this paper we extend the agglomerative hierarchical kernel spectral clustering (AH-K...
Kernel spectral clustering corresponds to a weighted kernel principal component analysis problem in ...
Kernel spectral clustering corresponds to a weighted kernel principal component analysis problem in ...
Kernel spectral clustering corresponds to a weighted kernel principal component analysis problem in ...
This work outlines a unified formulation to represent spectral approaches for both dimensionality re...
Abstract—A new formulation for multiway spectral clustering is proposed. This method corresponds to ...
Clustering algorithms are a useful tool to explore data structures and have been employed in many di...
Abstract. This article proposes a first analysis of kernel spectral clustering methods in the regime...
ABSTRACT Clustering algorithms are a useful tool to explore data structures and have been employed ...
© 2015 IEEE. This paper introduces a methodology to incorporate the label information in discovering...
International audienceThis article proposes a first analysis of kernel spectral clustering methods i...
Spectral clustering refers to a class of techniques which rely on the eigenstructure of a similarity...
© 2014 IEEE. For a given data set, exploring their multi-view instances under a clustering framework...
© 2016 IEEE. Kernel Spectral Clustering (KSC) solves a weighted kernel principal component analysis ...
Spectral methods, as an unsupervised technique, have been used with success in data mining such as L...