During the last twenty years, Random matrix theory (RMT) has produced numerous results that allow a better understanding of large random matrices. These advances have enabled interesting applications in the domain of communication. Although this theory can contribute to many other domains such as brain imaging or genetic research, its has been rarely applied. The main barrier to the adoption of RMT may be the lack of concrete statistical results from probabilistic Random matrix theory. Indeed, direct generalisation of classical multivariate theory to high dimensional assumptions is often difficult and the proposed procedures often assume strong hypotheses on the data matrix such as normality or overly restrictive independence conditions on ...
A novel method is proposed for detecting changes in the covariance structure of moderate dimensional...
This article studies the limiting behavior of a class of robust population covariance matrix estimat...
We extend to the matrix setting a recent result of Srivastava-Vershynin about estimating the covaria...
We give an overview of random matrix theory (RMT) with the objective of highlighting the results and...
An original interface between robust estimation theory and random matrix theory for the estimation o...
International audienceRandom matrix theory deals with the study of matrix-valued random variables. I...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
International audienceAn original interface between robust estimation theory and random matrix theor...
Books on linear models and multivariate analysis generally include a chapter on matrix algebra, quit...
Let {Xij}, i, j = · · · , be a double array of independent and identically distributed (i.i.d.) real...
The present work provides an original framework for random matrix analysis based on revisiting the c...
summary:Test statistics for testing some hypotheses on characteristic roots of covariance matrices a...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
International audienceThis paper studies the limiting behavior of a class of robust population covar...
We analyze cross correlations between price fluctuations of different stocks using methods of random...
A novel method is proposed for detecting changes in the covariance structure of moderate dimensional...
This article studies the limiting behavior of a class of robust population covariance matrix estimat...
We extend to the matrix setting a recent result of Srivastava-Vershynin about estimating the covaria...
We give an overview of random matrix theory (RMT) with the objective of highlighting the results and...
An original interface between robust estimation theory and random matrix theory for the estimation o...
International audienceRandom matrix theory deals with the study of matrix-valued random variables. I...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
International audienceAn original interface between robust estimation theory and random matrix theor...
Books on linear models and multivariate analysis generally include a chapter on matrix algebra, quit...
Let {Xij}, i, j = · · · , be a double array of independent and identically distributed (i.i.d.) real...
The present work provides an original framework for random matrix analysis based on revisiting the c...
summary:Test statistics for testing some hypotheses on characteristic roots of covariance matrices a...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
International audienceThis paper studies the limiting behavior of a class of robust population covar...
We analyze cross correlations between price fluctuations of different stocks using methods of random...
A novel method is proposed for detecting changes in the covariance structure of moderate dimensional...
This article studies the limiting behavior of a class of robust population covariance matrix estimat...
We extend to the matrix setting a recent result of Srivastava-Vershynin about estimating the covaria...