The `1-regularized Gaussian maximum likelihood estimator (MLE) has been shown to have strong statistical guarantees in recovering a sparse inverse covariance matrix, or alterna-tively the underlying graph structure of a Gaussian Markov Random Field, from very limited samples. We propose a novel algorithm for solving the resulting optimization prob-lem which is a regularized log-determinant program. In contrast to recent state-of-the-art methods that largely use first order gradient information, our algorithm is based on New-ton’s method and employs a quadratic approximation, but with some modifications that leverage the structure of the sparse Gaussian MLE problem. We show that our method is superlinearly convergent, and present experimenta...
Gaussian Markov random fields (GMRFs) are useful in a broad range of applications. In this paper we ...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
International audienceSparse coding is now one of the state-of-art approaches for solving inverse pr...
The `1-regularized Gaussian maximum likelihood estimator (MLE) has been shown to have strong statist...
In this paper we consider the task of esti-mating the non-zero pattern of the sparse in-verse covari...
Several methods have been recently proposed for estimating sparse Gaussian graphical models using `1...
We consider the maximum likelihood estimation of sparse inverse covariance matrices. We demonstrate ...
We consider the problem of estimating a sparse Gaussian Graphical Model with a special graph topolog...
Gaussian graphical models are of great interest in statistical learning. Because the conditional ind...
In this paper we consider estimating sparse inverse covariance of a Gaussian graph-ical model whose ...
Sparse inverse covariance selection is a powerful tool for estimating sparse graphs in statistical l...
We consider the problem of fitting a large-scale covariance matrix to multivariate Gaussian data in ...
Recently, major attention has been given to penalized log-likelihood estimators for sparse precision...
A Gaussian graphical model is a graph representation of conditional independence relations among Gau...
We study the problem of estimating a high-dimensional sparse covariance matrix, Σ_0, from a finite n...
Gaussian Markov random fields (GMRFs) are useful in a broad range of applications. In this paper we ...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
International audienceSparse coding is now one of the state-of-art approaches for solving inverse pr...
The `1-regularized Gaussian maximum likelihood estimator (MLE) has been shown to have strong statist...
In this paper we consider the task of esti-mating the non-zero pattern of the sparse in-verse covari...
Several methods have been recently proposed for estimating sparse Gaussian graphical models using `1...
We consider the maximum likelihood estimation of sparse inverse covariance matrices. We demonstrate ...
We consider the problem of estimating a sparse Gaussian Graphical Model with a special graph topolog...
Gaussian graphical models are of great interest in statistical learning. Because the conditional ind...
In this paper we consider estimating sparse inverse covariance of a Gaussian graph-ical model whose ...
Sparse inverse covariance selection is a powerful tool for estimating sparse graphs in statistical l...
We consider the problem of fitting a large-scale covariance matrix to multivariate Gaussian data in ...
Recently, major attention has been given to penalized log-likelihood estimators for sparse precision...
A Gaussian graphical model is a graph representation of conditional independence relations among Gau...
We study the problem of estimating a high-dimensional sparse covariance matrix, Σ_0, from a finite n...
Gaussian Markov random fields (GMRFs) are useful in a broad range of applications. In this paper we ...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
International audienceSparse coding is now one of the state-of-art approaches for solving inverse pr...