Our work contributes to the theory of non-parametric minimax tests for high dimensional covariance matrices. More precisely, we observe n independent, identically distributed vectors of dimension p, X_1,..., X_n having Gaussian distribution ℕ_p(0, ∑), where ∑ is the unknown covariance matrix. We test the null hypothesis H_0:∑ = I, where I is the identity matrix. The alternative hypothesis is given by an ellipsoid from which a ball of radius φ centered in I is removed. Asymptotically, n and p tend to infinity. The minimax test theory, other approaches considered for testing covariance matrices and a summary of our results are given in the introduction. The second chapter is devoted to the case of Toeplitz covariance matrices ∑. The connectio...
Let n-dimensional Gaussian random vector x = ξ + v be observed where ξ is a standard n-dimensional G...
AbstractLet S: p × p have a nonsingular Wishart distribution with unknown matrix Σ and n degrees of ...
We observe a $N\times M$ matrix $Y_{ij}=s_{ij}+\xi_{ij}$ with $\xi_{ij}\sim\CN(0,1)$ i.i.d. in $i,j$...
Our work contributes to the theory of non-parametric minimax tests for high dimensional covariance m...
Our work contributes to the theory of non-parametric minimax tests for high dimensional covariance m...
Ces travaux contribuent à la théorie des tests non paramétriques minimax dans le modèle de grandes m...
We observe an infinitely dimensional Gaussian random vector x = ξ + v where ξ is a sequence of stand...
We observe an infinitely dimensional Gaussian random vector x=#xi#+#upsilon# where #xi# is a sequenc...
This thesis considers in the high dimensional setting two canonical testing problems in multivariate...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
Thesis (Ph.D.)--University of Washington, 2021This dissertation is divided into two parts. In the fi...
Part I: The Gaussian white noise model has been used as a general framework for nonparametric proble...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
AbstractThis article analyzes whether some existing tests for the p×p covariance matrix Σ of the N i...
Let n-dimensional Gaussian random vector x = ξ + v be observed where ξ is a standard n-dimensional G...
AbstractLet S: p × p have a nonsingular Wishart distribution with unknown matrix Σ and n degrees of ...
We observe a $N\times M$ matrix $Y_{ij}=s_{ij}+\xi_{ij}$ with $\xi_{ij}\sim\CN(0,1)$ i.i.d. in $i,j$...
Our work contributes to the theory of non-parametric minimax tests for high dimensional covariance m...
Our work contributes to the theory of non-parametric minimax tests for high dimensional covariance m...
Ces travaux contribuent à la théorie des tests non paramétriques minimax dans le modèle de grandes m...
We observe an infinitely dimensional Gaussian random vector x = ξ + v where ξ is a sequence of stand...
We observe an infinitely dimensional Gaussian random vector x=#xi#+#upsilon# where #xi# is a sequenc...
This thesis considers in the high dimensional setting two canonical testing problems in multivariate...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
Thesis (Ph.D.)--University of Washington, 2021This dissertation is divided into two parts. In the fi...
Part I: The Gaussian white noise model has been used as a general framework for nonparametric proble...
In this paper, tests are developed for testing certain hypotheses on the covari-ance matrix Σ, when ...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
AbstractThis article analyzes whether some existing tests for the p×p covariance matrix Σ of the N i...
Let n-dimensional Gaussian random vector x = ξ + v be observed where ξ is a standard n-dimensional G...
AbstractLet S: p × p have a nonsingular Wishart distribution with unknown matrix Σ and n degrees of ...
We observe a $N\times M$ matrix $Y_{ij}=s_{ij}+\xi_{ij}$ with $\xi_{ij}\sim\CN(0,1)$ i.i.d. in $i,j$...