Eigenanalysis is common practice in biostatistics, and the largest eigenvalue of a data set contains valuable information about the data. However, to make inferences about the size of the largest eigenvalue, its distribution must be known. Johnstone's theorem states that the largest eigenvalues l1 of real random covariance matrices are distributed according to the Tracy-Widom distribution of order 1 when properly normalized to L1=l1-ηnpξnp, where ηnp and ξnp are functions of the data matrix dimensions n and p. Very often, data are expressed in terms of correlations (autoscaling) for which case Johnstone's theorem does not work because the normalizing parameters ηnp and ξnp are not theoretically known. In this paper we propose a semi-empiric...
The distribution of genetic variance in multivariate phenotypes is characterized by the empirical sp...
none2noThe study of the statistical distribution of the eigenvalues of Wishart matrices finds applic...
Let Xp = (s1, . . . , sn) = (Xij )p×n where Xij ’s are independent and identically distributed (i.i....
Eigenanalysis is common practice in biostatistics, and the largest eigenvalue of a data set contains...
We consider sample covariance matrices of the form Q = ( σ1/2X)(σ1/2X)∗, where the sample X is an M ...
This paper is aimed at deriving the universality of the largest eigenvalue of a class of high-dimens...
This thesis is concerned about the asymptotic behavior of the largest eigenvalues for some random ma...
Recently Johansson and Johnstone proved that the distribution of the (properly rescaled) la...
none1noWe derive efficient recursive formulas giving the exact distribution of the largest eigenvalu...
We consider settings where the observations are drawn from a zero-mean multivariate (real or complex...
This paper demonstrates an introduction to the statistical distribution of eigenval-ues in Random Ma...
We consider large complex random sample covariance matrices obtained from ``spiked populations'', th...
In random matrix theory, the Tracy-Widom (TW) distribution describes the behavior of the largest eig...
Wirtz T, Kieburg M, Guhr T. Limiting statistics of the largest and smallest eigenvalues in the corre...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
The distribution of genetic variance in multivariate phenotypes is characterized by the empirical sp...
none2noThe study of the statistical distribution of the eigenvalues of Wishart matrices finds applic...
Let Xp = (s1, . . . , sn) = (Xij )p×n where Xij ’s are independent and identically distributed (i.i....
Eigenanalysis is common practice in biostatistics, and the largest eigenvalue of a data set contains...
We consider sample covariance matrices of the form Q = ( σ1/2X)(σ1/2X)∗, where the sample X is an M ...
This paper is aimed at deriving the universality of the largest eigenvalue of a class of high-dimens...
This thesis is concerned about the asymptotic behavior of the largest eigenvalues for some random ma...
Recently Johansson and Johnstone proved that the distribution of the (properly rescaled) la...
none1noWe derive efficient recursive formulas giving the exact distribution of the largest eigenvalu...
We consider settings where the observations are drawn from a zero-mean multivariate (real or complex...
This paper demonstrates an introduction to the statistical distribution of eigenval-ues in Random Ma...
We consider large complex random sample covariance matrices obtained from ``spiked populations'', th...
In random matrix theory, the Tracy-Widom (TW) distribution describes the behavior of the largest eig...
Wirtz T, Kieburg M, Guhr T. Limiting statistics of the largest and smallest eigenvalues in the corre...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
The distribution of genetic variance in multivariate phenotypes is characterized by the empirical sp...
none2noThe study of the statistical distribution of the eigenvalues of Wishart matrices finds applic...
Let Xp = (s1, . . . , sn) = (Xij )p×n where Xij ’s are independent and identically distributed (i.i....