AbstractIn this paper, we propose a new componentwise estimator of a dispersion matrix, based on a highly robust estimator of scale. The key idea is the elimination of a location estimator in the dispersion estimation procedure. The robustness properties are studied by means of the influence function and the breakdown point. Further characteristics such as asymptotic variance and efficiency are also analyzed. It is shown in the componentwise approach, for multivariate Gaussian distributions, that covariance matrix estimation is more difficult than correlation matrix estimation. The reason is that the asymptotic variance of the covariance estimator increases with increasing dependence, whereas it decreases with increasing dependence for corr...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
AbstractApplying the non-singular affine transformations AZ + μ to a spherically symmetrically distr...
Cet article propose une revue de littérature des récentes avancées en estimation robuste de matrices...
In this paper, we propose a new componentwise estimator of a dispersion matrix, based on a highly ro...
AbstractIn this paper, we propose a new componentwise estimator of a dispersion matrix, based on a h...
Algebraically, principal components can be defined as the eigenvalues and eigenvectors of a covarian...
In this paper we introduce weighted estimators of the location and dispersion of a multivariate data...
A common technique for robust dispersion estimators is to apply the classical estimator to some subs...
Li and Chen (J. Amer. Statist. Assoc. 80 (1985) 759) proposed a method for principal components usin...
Robust estimators for multivariate location and dispersion should be ãn consistent and highly outlie...
A severe limitation for the application of robust position and scale estimators having a high breakd...
AbstractLi and Chen (J. Amer. Statist. Assoc. 80 (1985) 759) proposed a method for principal compone...
Li and Chen (J. Amer. Statist. Assoc. 80 (1985) 759) proposed a method for principal components usin...
AbstractWe introduce a class of robust estimates for multivariate linear models. The regression coef...
International audienceThe geometric median covariation matrix is a robust multivariate indicator of ...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
AbstractApplying the non-singular affine transformations AZ + μ to a spherically symmetrically distr...
Cet article propose une revue de littérature des récentes avancées en estimation robuste de matrices...
In this paper, we propose a new componentwise estimator of a dispersion matrix, based on a highly ro...
AbstractIn this paper, we propose a new componentwise estimator of a dispersion matrix, based on a h...
Algebraically, principal components can be defined as the eigenvalues and eigenvectors of a covarian...
In this paper we introduce weighted estimators of the location and dispersion of a multivariate data...
A common technique for robust dispersion estimators is to apply the classical estimator to some subs...
Li and Chen (J. Amer. Statist. Assoc. 80 (1985) 759) proposed a method for principal components usin...
Robust estimators for multivariate location and dispersion should be ãn consistent and highly outlie...
A severe limitation for the application of robust position and scale estimators having a high breakd...
AbstractLi and Chen (J. Amer. Statist. Assoc. 80 (1985) 759) proposed a method for principal compone...
Li and Chen (J. Amer. Statist. Assoc. 80 (1985) 759) proposed a method for principal components usin...
AbstractWe introduce a class of robust estimates for multivariate linear models. The regression coef...
International audienceThe geometric median covariation matrix is a robust multivariate indicator of ...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
AbstractApplying the non-singular affine transformations AZ + μ to a spherically symmetrically distr...
Cet article propose une revue de littérature des récentes avancées en estimation robuste de matrices...