Extending rank-based inference to a multivariate setting such as multiple-output regression or MANOVA with unspecified d-dimensional error density has remained an open problem for more than half a century. None of the many solutions proposed so far is enjoying the combination of distribution-freeness and efficiency that makes rank-based inference a successful tool in the univariate setting. A concept of center-outward multivariate ranks and signs based on measure transportation ideas has been introduced recently. Center-outward ranks and signs are not only distribution-free but achieve in dimension d > 1 the (essential) maximal ancillarity property of traditional univariate ranks, hence carry all the “distribution-free information" availabl...
Nonparametric procedures for testing and estimation of the shape matrix in the case of multivariate ...
All multivariate extensions of the univariate theory of risk measurement run into the same fundament...
Unlike the real line, the real space Rd, for d 2, is not canonically ordered. As a consequence,such ...
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
Extending to dimension 2 and higher the dual univariate concepts of ranks and quantiles has remained...
We develop a class of tests for semiparametric vector autoregressive (VAR) models with unspecified i...
Revisiting the pseudo-Gaussian tests of Chitturi (1974), Hosking (1980), and Li and McLeod (1981) fo...
The classical univariate sign and signed rank tests for location have been extended over the years t...
Based on the novel concept of multivariate center-outward quantiles introduced recently in Chernozhu...
New rank scores test statistics are proposed for testing whether two random vectors are independent....
Defining multivariate generalizations of the classical univariate ranks has been a long-standing ope...
By modifying the method of projection, the results of Hajek and Huskova are extended to show the asy...
AbstractBy modifying the method of projection, the results of Hajek and Huskova are extended to show...
Multivariate analysis of variance (MANOVA) is a powerful and versatile method to infer and quantify ...
We generalize signed rank statistics to dimensions higher than one. This results in a class of ortho...
Nonparametric procedures for testing and estimation of the shape matrix in the case of multivariate ...
All multivariate extensions of the univariate theory of risk measurement run into the same fundament...
Unlike the real line, the real space Rd, for d 2, is not canonically ordered. As a consequence,such ...
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
Extending to dimension 2 and higher the dual univariate concepts of ranks and quantiles has remained...
We develop a class of tests for semiparametric vector autoregressive (VAR) models with unspecified i...
Revisiting the pseudo-Gaussian tests of Chitturi (1974), Hosking (1980), and Li and McLeod (1981) fo...
The classical univariate sign and signed rank tests for location have been extended over the years t...
Based on the novel concept of multivariate center-outward quantiles introduced recently in Chernozhu...
New rank scores test statistics are proposed for testing whether two random vectors are independent....
Defining multivariate generalizations of the classical univariate ranks has been a long-standing ope...
By modifying the method of projection, the results of Hajek and Huskova are extended to show the asy...
AbstractBy modifying the method of projection, the results of Hajek and Huskova are extended to show...
Multivariate analysis of variance (MANOVA) is a powerful and versatile method to infer and quantify ...
We generalize signed rank statistics to dimensions higher than one. This results in a class of ortho...
Nonparametric procedures for testing and estimation of the shape matrix in the case of multivariate ...
All multivariate extensions of the univariate theory of risk measurement run into the same fundament...
Unlike the real line, the real space Rd, for d 2, is not canonically ordered. As a consequence,such ...