We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambiguity set to infer the inverse covariance matrix of a p-dimensional Gaussian random vector from n independent samples. The proposed model minimizes the worst case (maximum) of Stein's loss across all normal reference distributions within a prescribed Wasserstein distance from the normal distribution characterized by the sample mean and the sample covariance matrix. We prove that this estimation problem is equivalent to a semidefinite program that is tractable in theory but beyond the reach of general purpose solvers for practically relevant problem dimensions p. In the absence of any prior structural information, the estimation problem has an a...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
AbstractLet X,V1,…,Vn−1 be n random vectors in Rp with joint density of the formf(X−θ)′Σ−1(X−θ)+∑j=1...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
Let X,V1,...,Vn-1 be n random vectors in with joint density of the formwhere both [theta] and [Sigma...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
AbstractLet X,V1,…,Vn−1 be n random vectors in Rp with joint density of the formf(X−θ)′Σ−1(X−θ)+∑j=1...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
Let X,V1,...,Vn-1 be n random vectors in with joint density of the formwhere both [theta] and [Sigma...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
AbstractLet X,V1,…,Vn−1 be n random vectors in Rp with joint density of the formf(X−θ)′Σ−1(X−θ)+∑j=1...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...