In this paper, the shape matrix estimators based on spatial sign and rank vectors are considered. The estimators considered here are slight modifications of the estimators introduced in Dümbgen (1998) and Oja and Randles (2004) and further studied for example in Sirkiä et al. (2009). The shape estimators are computed using pairwise differences of the observed data, therefore there is no need to estimate the location center of the data. When the estimator is based on signs, the use of differences also implies that the estimators have the so called independence property if the estimator, that is used as an initial estimator, has it. The influence functions and limiting distributions of the estimators are derived at the multivariate elliptical...
Objects are distinguished from each other amongst other things by their shapes. The thesis is concer...
International audienceThis paper aims at presenting a simulative analysis of the main properties of ...
Abstract. A new robust correlation estimator based on the spatial sign covariance matrix (SSCM) is p...
Consider a sample x1,..., xn from a p-variate elliptically symmetric dis-tribution with density f(x;...
Nonparametric procedures for testing and estimation of the shape matrix in the case of multivariate ...
The Sign Covariance Matrix is an orthogonal equivariant estimator of multivariate scale. It is often...
The Sign Covariance Matrix is an orthogonal equivariant estimator of mul- tivariate scale. It is oft...
A class of R-estimators, based on the concepts of multivariate signed ranks and the optimal rank-bas...
A class of R-estimators based on the concepts of multivariate signed ranks and the optimal rank-base...
International audienceThe joint estimation of the location vector and the shape matrix of a set of i...
International audienceThe joint estimation of the location vector and the shape matrix of a set of i...
diverse methods for analyzing size-free shape differences tend to be guided by computational expedie...
AbstractIt has been frequently observed in the literature that many multivariate statistical methods...
Very general concepts of scatter, extending the traditional notion of covariance matrices, have beco...
The matrix variate elliptical generalization of [30] is presented in this work. The published Gaussi...
Objects are distinguished from each other amongst other things by their shapes. The thesis is concer...
International audienceThis paper aims at presenting a simulative analysis of the main properties of ...
Abstract. A new robust correlation estimator based on the spatial sign covariance matrix (SSCM) is p...
Consider a sample x1,..., xn from a p-variate elliptically symmetric dis-tribution with density f(x;...
Nonparametric procedures for testing and estimation of the shape matrix in the case of multivariate ...
The Sign Covariance Matrix is an orthogonal equivariant estimator of multivariate scale. It is often...
The Sign Covariance Matrix is an orthogonal equivariant estimator of mul- tivariate scale. It is oft...
A class of R-estimators, based on the concepts of multivariate signed ranks and the optimal rank-bas...
A class of R-estimators based on the concepts of multivariate signed ranks and the optimal rank-base...
International audienceThe joint estimation of the location vector and the shape matrix of a set of i...
International audienceThe joint estimation of the location vector and the shape matrix of a set of i...
diverse methods for analyzing size-free shape differences tend to be guided by computational expedie...
AbstractIt has been frequently observed in the literature that many multivariate statistical methods...
Very general concepts of scatter, extending the traditional notion of covariance matrices, have beco...
The matrix variate elliptical generalization of [30] is presented in this work. The published Gaussi...
Objects are distinguished from each other amongst other things by their shapes. The thesis is concer...
International audienceThis paper aims at presenting a simulative analysis of the main properties of ...
Abstract. A new robust correlation estimator based on the spatial sign covariance matrix (SSCM) is p...