AbstractThe so-called independent component (IC) model states that the observed p-vector X is generated via X=ΛZ+μ, where μ is a p-vector, Λ is a full-rank matrix, and the centered random vector Z has independent marginals. We consider the problem of testing the null hypothesis H0:μ=0 on the basis of i.i.d. observations X1,…,Xn generated by the symmetric version of the IC model above (for which all ICs have a symmetric distribution about the origin). In the spirit of [M. Hallin, D. Paindaveine, Optimal tests for multivariate location based on interdirections and pseudo-Mahalanobis ranks, Annals of Statistics, 30 (2002), 1103–1133], we develop nonparametric (signed-rank) tests, which are valid without any moment assumption and are, for adequ...
We develop a class of tests for semiparametric vector autoregressive (VAR) models with unspecified i...
This paper provides parametric and rank-based optimal tests for eigenvectors and eigenvalues of cova...
In testing independence of two random variables based on rank statistics, several rank statistics su...
The so-called independent component (IC) model states that the observed p-vectorX is generated via X...
We consider the problem of testing for multivariate independence in independent component (IC) mode...
There are plenty of tests for multivariate location around which all make slightly different assumpt...
We generalize signed rank statistics to dimensions higher than one. This results in a class of ortho...
summary:Let $X_i$, $1\le i \le N$, be $N$ independent random variables (i.r.v.) with distribution fu...
AbstractWe develop optimal rank-based procedures for testing affine-invariant linear hypotheses on t...
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
New rank scores test statistics are proposed for testing whether two random vectors are independent....
In this paper, we propose nonparametric locally and asymptotically optimal tests for the problem of ...
We are constructing, for the problem of univariate symmetry (with respect to specified or unspecifie...
Let X1,..., Xn be a random sample from a p-variate distribution and assume that the mul-tivariate ob...
The aim of this paper is to construct a class of locally asymptotically most stringent (in the Le Ca...
We develop a class of tests for semiparametric vector autoregressive (VAR) models with unspecified i...
This paper provides parametric and rank-based optimal tests for eigenvectors and eigenvalues of cova...
In testing independence of two random variables based on rank statistics, several rank statistics su...
The so-called independent component (IC) model states that the observed p-vectorX is generated via X...
We consider the problem of testing for multivariate independence in independent component (IC) mode...
There are plenty of tests for multivariate location around which all make slightly different assumpt...
We generalize signed rank statistics to dimensions higher than one. This results in a class of ortho...
summary:Let $X_i$, $1\le i \le N$, be $N$ independent random variables (i.r.v.) with distribution fu...
AbstractWe develop optimal rank-based procedures for testing affine-invariant linear hypotheses on t...
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
New rank scores test statistics are proposed for testing whether two random vectors are independent....
In this paper, we propose nonparametric locally and asymptotically optimal tests for the problem of ...
We are constructing, for the problem of univariate symmetry (with respect to specified or unspecifie...
Let X1,..., Xn be a random sample from a p-variate distribution and assume that the mul-tivariate ob...
The aim of this paper is to construct a class of locally asymptotically most stringent (in the Le Ca...
We develop a class of tests for semiparametric vector autoregressive (VAR) models with unspecified i...
This paper provides parametric and rank-based optimal tests for eigenvectors and eigenvalues of cova...
In testing independence of two random variables based on rank statistics, several rank statistics su...