Spectral clustering is one of the most popular algorithms to group high dimensional data. It is easy to implement and computationally efficient. Despite its popularity and successful applications, its theoretical properties have not been fully understood. In this paper, we show that spectral clustering is minimax optimal in the Gaussian Mixture Model with isotropic covariance matrix, when the number of clusters is fixed and the signal-to-noise ratio is large enough. Spectral gap conditions are widely assumed in the literature to analyze spectral clustering. On the contrary, these conditions are not needed to establish optimality of spectral clustering in this pape
The problem of variable clustering is that of estimating groups of similar components of a p-dimensi...
In recent years, spectral clustering has become a standard method for data analysis used in a broad ...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...
Clustering analysis is a popular technique in statistics and machine learning. Despite its wide use,...
International audienceWe study in this article the asymptotic performance of spectral clustering wit...
International audienceGaussian Mixture Models are widely used nowadays, thanks to the simplicity and...
<p>While several papers have investigated computationally and statistically efficient methods for le...
We consider the problem of learning mixtures of distributions via spectral methods and derive a tigh...
Abstract. This article proposes a first analysis of kernel spectral clustering methods in the regime...
International audienceThis article proposes a first analysis of kernel spectral clustering methods i...
An important aspect of clustering algorithms is whether the partitions constructed on finite samples...
An important aspect of clustering algorithms is whether the partitions constructed on finite samples...
The theoretical analysis of spectral clustering is mainly devoted to consistency, while there is lit...
8 pages, 3 figures, conferenceWe consider the problem of Gaussian mixture clustering in the high-dim...
Spectral clustering consists in creating, from the spectral elements of a Gaussian affinity matrix, ...
The problem of variable clustering is that of estimating groups of similar components of a p-dimensi...
In recent years, spectral clustering has become a standard method for data analysis used in a broad ...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...
Clustering analysis is a popular technique in statistics and machine learning. Despite its wide use,...
International audienceWe study in this article the asymptotic performance of spectral clustering wit...
International audienceGaussian Mixture Models are widely used nowadays, thanks to the simplicity and...
<p>While several papers have investigated computationally and statistically efficient methods for le...
We consider the problem of learning mixtures of distributions via spectral methods and derive a tigh...
Abstract. This article proposes a first analysis of kernel spectral clustering methods in the regime...
International audienceThis article proposes a first analysis of kernel spectral clustering methods i...
An important aspect of clustering algorithms is whether the partitions constructed on finite samples...
An important aspect of clustering algorithms is whether the partitions constructed on finite samples...
The theoretical analysis of spectral clustering is mainly devoted to consistency, while there is lit...
8 pages, 3 figures, conferenceWe consider the problem of Gaussian mixture clustering in the high-dim...
Spectral clustering consists in creating, from the spectral elements of a Gaussian affinity matrix, ...
The problem of variable clustering is that of estimating groups of similar components of a p-dimensi...
In recent years, spectral clustering has become a standard method for data analysis used in a broad ...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...