Correlation tests of multiple Gaussian signals are typically formulated as linear spectral statistics on the eigenvalues of the sample coherence matrix. This is the case of the Generalized Likelihood Ratio Test (GLRT), which is formulated as the determinant of the sample coherence matrix, or the locally most powerful invariant test (LMPIT), which is formulated as the Frobenius norm of this matrix. In this paper, the asymptotic behavior of general linear spectral statistics is analyzed assuming that both the sample size and the observation dimension increase without bound at the same rate. More specifically, almost sure convergence of a general class of linear spectral statistics is established, and an associated central limit theorem is for...
In this paper, we consider the fluctuation of mutual information statistics of a multiple input mult...
This paper addresses the asymptotic behavior of a particular type of information-plus-noise-type mat...
45 p. improved presentation; more proofs provided.International audienceThis paper introduces a unif...
Testing the independence of the entries of multidimensional Gaussian observations is a very importan...
This paper shows their of rate of convergence to be 1/n by proving, after proper scaling, they form ...
The problem of correlation detection of multivariate Gaussian observations is considered. The proble...
Detecting the presence of one or multiple signals with unknown spatial signature can be addressed by...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
In this thesis we shall consider sample covariance matrices Sn in the case when the dimension of the...
Using the Coulomb Fluid method, this paper derives central limit theorems (CLTs) for linear spectral...
In this paper we study the existence of locally most powerful invariant tests (LMPIT) for the proble...
Let A = 1/√np(XT X−pIn) where X is a p×n matrix, consisting of independent and identically distribut...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
In this paper, we consider the fluctuation of mutual information statistics of a multiple input mult...
This paper addresses the asymptotic behavior of a particular type of information-plus-noise-type mat...
45 p. improved presentation; more proofs provided.International audienceThis paper introduces a unif...
Testing the independence of the entries of multidimensional Gaussian observations is a very importan...
This paper shows their of rate of convergence to be 1/n by proving, after proper scaling, they form ...
The problem of correlation detection of multivariate Gaussian observations is considered. The proble...
Detecting the presence of one or multiple signals with unknown spatial signature can be addressed by...
52 pp. More covariance formulas are provided in section 4.2.International audienceIn this paper, the...
In this thesis we shall consider sample covariance matrices Sn in the case when the dimension of the...
Using the Coulomb Fluid method, this paper derives central limit theorems (CLTs) for linear spectral...
In this paper we study the existence of locally most powerful invariant tests (LMPIT) for the proble...
Let A = 1/√np(XT X−pIn) where X is a p×n matrix, consisting of independent and identically distribut...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
In this paper, we consider the fluctuation of mutual information statistics of a multiple input mult...
This paper addresses the asymptotic behavior of a particular type of information-plus-noise-type mat...
45 p. improved presentation; more proofs provided.International audienceThis paper introduces a unif...