International audienceIn this paper a new soft subspace clustering algorithm is proposed. It is an iterative algorithm based on the minimization of a new objective function. The classification approach is developed by acting at three essential points. The first one is related to an initialization step; we suggest to use a multi-class support vector machine (SVM) for improving the initial classification parameters. The second point is based on the new objective function. It is formed by a separation term and compactness ones. The density of clusters is introduced in the last term to yield different cluster shapes. The third and the most important point consists in an active learning with SVM incorporated in the classification process. It all...
In this paper we propose an algorithm for soft (or fuzzy) clustering. In soft clustering each point ...
This paper proposes a Fuzzy K-modes-based Algorithm for Soft Subspace Clustering, which adopts some ...
Subspace clustering aims to find clusters in the low-dimensional subspaces for high-dimensional data...
This paper describes a new soft clustering algorithm in which each cluster is modelled by a oneclass...
While within-cluster information is commonly utilized in most soft subspace clustering approaches in...
In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspace cluste...
Abstract—In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspa...
In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSSC, is pro...
Abstract—In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSS...
Clustering is one of the most used tools in data analysis. In the last decades, due to the increasin...
In this note, we propose a novel classification approach by introducing a new clustering method, whi...
Soft subspace clustering are effective clustering techniques for high dimensional datasets. In this ...
Subspace clustering is a growing field of unsupervised learning that has gained much popularity in t...
As one of the most popular clustering techniques for high dimensional data, soft subspace clustering...
In this paper a novel kernel-based soft clustering method is proposed. This method incorporates roug...
In this paper we propose an algorithm for soft (or fuzzy) clustering. In soft clustering each point ...
This paper proposes a Fuzzy K-modes-based Algorithm for Soft Subspace Clustering, which adopts some ...
Subspace clustering aims to find clusters in the low-dimensional subspaces for high-dimensional data...
This paper describes a new soft clustering algorithm in which each cluster is modelled by a oneclass...
While within-cluster information is commonly utilized in most soft subspace clustering approaches in...
In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspace cluste...
Abstract—In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspa...
In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSSC, is pro...
Abstract—In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSS...
Clustering is one of the most used tools in data analysis. In the last decades, due to the increasin...
In this note, we propose a novel classification approach by introducing a new clustering method, whi...
Soft subspace clustering are effective clustering techniques for high dimensional datasets. In this ...
Subspace clustering is a growing field of unsupervised learning that has gained much popularity in t...
As one of the most popular clustering techniques for high dimensional data, soft subspace clustering...
In this paper a novel kernel-based soft clustering method is proposed. This method incorporates roug...
In this paper we propose an algorithm for soft (or fuzzy) clustering. In soft clustering each point ...
This paper proposes a Fuzzy K-modes-based Algorithm for Soft Subspace Clustering, which adopts some ...
Subspace clustering aims to find clusters in the low-dimensional subspaces for high-dimensional data...