International audienceGaussian Mixture Models are widely used nowadays, thanks to the simplicity and efficiency of the Expectation-Maximization algorithm. However, determining the optimal number of components is tricky and, in the context of data partitioning, may differ from the actual number of clusters. We propose to apply a post-processing step by means of Spectral Clustering: it allows a clever merging of similar Gaussians thanks to the Bhattacharyya distance so that clusters of any shape are automatically discovered. The proposed method shows a significant improvement compared to the classical Gaussian Mixture clustering approach and promising results against well-known partitioning algorithms with respect to the number of parameters
Abstract:- Estimating the optimal number of clusters for a dataset is one of the most essential issu...
Clustering mixed data presents numerous challenges inherent to the very heterogeneous nature of the ...
Mixture model-based clustering usually assumes that the data arise from a mixture population in orde...
We present an algorithm for generating a mixture model from a data set by converting the data into a...
Spectral clustering is one of the most popular algorithms to group high dimensional data. It is easy...
This report provides an review of Clustering using Mixture Models and the Expecta-tion Maximization ...
International audienceBinning data provides a solution in deducing computation expense in cluster an...
Abstract We introduce a new method for data clustering based on a particular Gaussian mixture model ...
We consider the problem of learning mixtures of distributions via spectral methods and derive a tigh...
Print ISBN: 978-1-4577-0044-6International audienceBinning of data in cluster analysis has advantage...
In multivariate datasets, multiple clustering solutions can be obtained, based on different subsets ...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
International audienceIn this article, we describe a novel unsupervised spectral image segmentation ...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
In Chapter 1 we give a general introduction and motivate the need for clustering and dimension reduc...
Abstract:- Estimating the optimal number of clusters for a dataset is one of the most essential issu...
Clustering mixed data presents numerous challenges inherent to the very heterogeneous nature of the ...
Mixture model-based clustering usually assumes that the data arise from a mixture population in orde...
We present an algorithm for generating a mixture model from a data set by converting the data into a...
Spectral clustering is one of the most popular algorithms to group high dimensional data. It is easy...
This report provides an review of Clustering using Mixture Models and the Expecta-tion Maximization ...
International audienceBinning data provides a solution in deducing computation expense in cluster an...
Abstract We introduce a new method for data clustering based on a particular Gaussian mixture model ...
We consider the problem of learning mixtures of distributions via spectral methods and derive a tigh...
Print ISBN: 978-1-4577-0044-6International audienceBinning of data in cluster analysis has advantage...
In multivariate datasets, multiple clustering solutions can be obtained, based on different subsets ...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
International audienceIn this article, we describe a novel unsupervised spectral image segmentation ...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
In Chapter 1 we give a general introduction and motivate the need for clustering and dimension reduc...
Abstract:- Estimating the optimal number of clusters for a dataset is one of the most essential issu...
Clustering mixed data presents numerous challenges inherent to the very heterogeneous nature of the ...
Mixture model-based clustering usually assumes that the data arise from a mixture population in orde...