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 inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
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 estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
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 estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
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...