We study statistical properties of the eigenvectors of non-Hermitian random matrices, concentrating on Ginibre's complex Gaussian ensemble, in which the real and imaginary parts of each element of an N × N matrix, J, are independent random variables. Calculating ensemble averages based on the quantity 〈Lα|Lβ〉〈R β|Rα〉, where 〈Lα| and |Rβ〉 are left and right eigenvectors of J, we show for large N that eigenvectors associated with a pair of eigenvalues are highly correlated if the two eigenvalues lie close in the complex plane. We examine consequences of these correlations that are likely to be important in physical applications
We study eigenvectors in the deformed Gaussian unitary ensemble of random matrices $H=W\tilde{H}W$, ...
We study the eigenvalue correlations of random Hermitian n × n matrices of the form S = M +∈H, where...
PhDIn 1965 J. Ginibre introduced an ensemble of random matrices with no symmetry conditions imposed...
We analyse correlations of eigenvectors in Ginibre's and Girko's ensembles of Gaussian, non-Hermitia...
We analyse correlations of eigenvectors in Ginibre's and Girko's ensembles of Gaussian, non-Hermitia...
In this thesis we begin by presenting an introduction on random matrices, their different classes an...
Recently, the smoothed correlation between the density of eigenvalues of Hermitian random matrices w...
Kanzieper E, Akemann G. Statistics of Real Eigenvalues in Ginibre's Ensemble of Random Real Matrices...
Abstract Using large N arguments, we propose a scheme for calculating the two-point eigenvector corr...
We study the eigenvalues and the eigenvectors of N X N structured random matrices of the form H = W ...
We start from recalling the generalization of the R-transform for strictly-nonhermitian large rando...
In this thesis we begin by presenting an introduction on random matrices, their different classes an...
We start from recalling the generalization of the R-transform for strictly-nonhermitian large rando...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
We study eigenvectors in the deformed Gaussian unitary ensemble of random matrices $H=W\tilde{H}W$, ...
We study the eigenvalue correlations of random Hermitian n × n matrices of the form S = M +∈H, where...
PhDIn 1965 J. Ginibre introduced an ensemble of random matrices with no symmetry conditions imposed...
We analyse correlations of eigenvectors in Ginibre's and Girko's ensembles of Gaussian, non-Hermitia...
We analyse correlations of eigenvectors in Ginibre's and Girko's ensembles of Gaussian, non-Hermitia...
In this thesis we begin by presenting an introduction on random matrices, their different classes an...
Recently, the smoothed correlation between the density of eigenvalues of Hermitian random matrices w...
Kanzieper E, Akemann G. Statistics of Real Eigenvalues in Ginibre's Ensemble of Random Real Matrices...
Abstract Using large N arguments, we propose a scheme for calculating the two-point eigenvector corr...
We study the eigenvalues and the eigenvectors of N X N structured random matrices of the form H = W ...
We start from recalling the generalization of the R-transform for strictly-nonhermitian large rando...
In this thesis we begin by presenting an introduction on random matrices, their different classes an...
We start from recalling the generalization of the R-transform for strictly-nonhermitian large rando...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
Random matrix theory allows one to deduce the eigenvalue spectrum of a large matrix given only stati...
We study eigenvectors in the deformed Gaussian unitary ensemble of random matrices $H=W\tilde{H}W$, ...
We study the eigenvalue correlations of random Hermitian n × n matrices of the form S = M +∈H, where...
PhDIn 1965 J. Ginibre introduced an ensemble of random matrices with no symmetry conditions imposed...