This paper derives central limit theorems (CLTs) for general linear spectral statistics (LSS) of three important multi-spiked Hermitian random matrix ensembles. The first is the most common spiked scenario, proposed by Johnstone, which is a central Wishart ensemble with fixed-rank perturbation of the identity matrix, the second is a non-central Wishart ensemble with fixed-rank noncentrality parameter, and the third is a similarly defined non-central F ensemble. These CLT results generalize our recent work Passemier (2015) to account for multiple spikes, which is the most common scenario met in practice. The generalization is non-trivial, as it now requires dealing with hypergeometric functions of matrix arguments.To facilitate our analysis,...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
We prove the Central Limit Theorem for finite-dimensional vectors of linear eigenvalue stat...
Using the Coulomb Fluid method, this paper derives central limit theorems (CLTs) for linear spectral...
The main topic addressed here is the joint distribution of spectra of submatrices M(1) and M(2) of l...
105 pagesWe prove a central limit theorem for fluctuations of individual eigenvalues of real Wishart...
Abstract. We show central limit theorems (CLT) for the linear statistics of symmetric matrices with ...
We prove that, for general test functions, the limiting behavior of the linear statistic of...
We prove that, for general test functions, the limiting behavior of the linear statistic of...
Abstract. In the paper [19], written in collaboration with Gesine Reinert, we proved a uni-versality...
In this thesis we shall consider sample covariance matrices Sn in the case when the dimension of the...
Let A = 1/√np(XT X−pIn) where X is a p×n matrix, consisting of independent and identically distribut...
Let A = 1/√np(XT X−pIn) where X is a p×n matrix, consisting of independent and identically distribut...
Given a large, high-dimensional sample from a spiked population, the top sample covariance eigenvalu...
For large dimensional non-Hermitian random matrices X with real or complex independent, identically ...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
We prove the Central Limit Theorem for finite-dimensional vectors of linear eigenvalue stat...
Using the Coulomb Fluid method, this paper derives central limit theorems (CLTs) for linear spectral...
The main topic addressed here is the joint distribution of spectra of submatrices M(1) and M(2) of l...
105 pagesWe prove a central limit theorem for fluctuations of individual eigenvalues of real Wishart...
Abstract. We show central limit theorems (CLT) for the linear statistics of symmetric matrices with ...
We prove that, for general test functions, the limiting behavior of the linear statistic of...
We prove that, for general test functions, the limiting behavior of the linear statistic of...
Abstract. In the paper [19], written in collaboration with Gesine Reinert, we proved a uni-versality...
In this thesis we shall consider sample covariance matrices Sn in the case when the dimension of the...
Let A = 1/√np(XT X−pIn) where X is a p×n matrix, consisting of independent and identically distribut...
Let A = 1/√np(XT X−pIn) where X is a p×n matrix, consisting of independent and identically distribut...
Given a large, high-dimensional sample from a spiked population, the top sample covariance eigenvalu...
For large dimensional non-Hermitian random matrices X with real or complex independent, identically ...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
We prove the Central Limit Theorem for finite-dimensional vectors of linear eigenvalue stat...