Clustering in high-dimensional spaces is a difficult problem which is recurrent in many domains, for example in image analysis. The difficulty is due to the fact that high-dimensional data usually exist in different low-dimensional subspaces hidden in the original space. A family of Gaussian mixture models designed for high-dimensional data which combine the ideas of subspace clustering and parsimonious modeling are presented. These models give rise to a clustering method based on the expectation-maximization algorithm which is called high-dimensional data clustering (HDDC). In order to correctly fit the data, HDDC estimates the specific subspace and the intrinsic dimension of each group. Experiments on artificial and real data sets show th...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
We propose a new Gaussian clustering method named EM-FDA for feature extraction in high dimensional ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
Clustering in high-dimensional spaces is a difficult problem which is recurrent in many domains, for...
International audienceClustering in high-dimensional spaces is a difficult problem which is recurren...
International audienceClustering in high-dimensional spaces is a recurrent problem in many domains, ...
International audienceClustering in high-dimensional spaces is a recurrent problem in many domains, ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
Variable selection is an important problem for cluster analysis of high-dimensional data. It is also...
Abstract. Clustering in high-dimensional spaces is nowadays a recurrent problem in many scientific d...
This paper presents the R package HDclassif which is devoted to the clustering and the discriminant ...
International audienceModel-based clustering is a popular tool which is renowned for its probabilist...
This paper presents the R package HDclassif which is devoted to the clustering and the discriminant ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
We propose a new Gaussian clustering method named EM-FDA for feature extraction in high dimensional ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
We propose a new Gaussian clustering method named EM-FDA for feature extraction in high dimensional ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
Clustering in high-dimensional spaces is a difficult problem which is recurrent in many domains, for...
International audienceClustering in high-dimensional spaces is a difficult problem which is recurren...
International audienceClustering in high-dimensional spaces is a recurrent problem in many domains, ...
International audienceClustering in high-dimensional spaces is a recurrent problem in many domains, ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
Variable selection is an important problem for cluster analysis of high-dimensional data. It is also...
Abstract. Clustering in high-dimensional spaces is nowadays a recurrent problem in many scientific d...
This paper presents the R package HDclassif which is devoted to the clustering and the discriminant ...
International audienceModel-based clustering is a popular tool which is renowned for its probabilist...
This paper presents the R package HDclassif which is devoted to the clustering and the discriminant ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
We propose a new Gaussian clustering method named EM-FDA for feature extraction in high dimensional ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...
We propose a new Gaussian clustering method named EM-FDA for feature extraction in high dimensional ...
International audienceThis paper presents the R package HDclassif which is devoted to the clustering...