A robust principal component analysis can be easily performed by computing the eigenvalues and eigenvectors of a robust estimator of the covariance or correlation matrix. In this paper we derive the influence functions and the corresponding asymptotic variances for these robust estimators of eigenvalues and eigenvectors. The behaviour of several of these estimators is investigated by a simulation study. It turns out that the theoretical results and simulations favour the use of S-estimators, since they combine a high efficiency with appealing robustness properties.status: publishe
AbstractA robust principal component analysis for samples from a bivariate distribution function is ...
The use of a principal component analysis is considered for multivariate data on families with diffe...
This paper demonstrates the effect of independent noise in principal components of k normally distri...
peer reviewedA robust principal component analysis can be easily performed by computing the eigenval...
This paper is concerned with a study of robust estimation in principal compo-nent analysis. A class ...
AbstractThis paper is concerned with a study of robust estimation in principal component analysis. A...
In this paper, we apply orthogonally equivariant spatial sign covariance matrices as well as their a...
Algebraically, principal components can be defined as the eigenvalues and eigenvectors of a covarian...
AbstractThe asymptotic distribution of the eigenvalues and eigenvectors of the robust scatter matrix...
Our aim is to construct a factor analysis method that can resist the effect of outliers. For this we...
AbstractOur aim is to construct a factor analysis method that can resist the effect of outliers. For...
Our aim is to construct a factor analysis method that can resist the effect of outliers. For this we...
Nonparametric correlation estimators as the Kendall and Spearman correlation are widely used in the ...
Principal Component Analysis (PCA) is an important tool in multivariate analysis, in particular when...
In this paper, under a proportional model, two families of robust estimates for the proportionality ...
AbstractA robust principal component analysis for samples from a bivariate distribution function is ...
The use of a principal component analysis is considered for multivariate data on families with diffe...
This paper demonstrates the effect of independent noise in principal components of k normally distri...
peer reviewedA robust principal component analysis can be easily performed by computing the eigenval...
This paper is concerned with a study of robust estimation in principal compo-nent analysis. A class ...
AbstractThis paper is concerned with a study of robust estimation in principal component analysis. A...
In this paper, we apply orthogonally equivariant spatial sign covariance matrices as well as their a...
Algebraically, principal components can be defined as the eigenvalues and eigenvectors of a covarian...
AbstractThe asymptotic distribution of the eigenvalues and eigenvectors of the robust scatter matrix...
Our aim is to construct a factor analysis method that can resist the effect of outliers. For this we...
AbstractOur aim is to construct a factor analysis method that can resist the effect of outliers. For...
Our aim is to construct a factor analysis method that can resist the effect of outliers. For this we...
Nonparametric correlation estimators as the Kendall and Spearman correlation are widely used in the ...
Principal Component Analysis (PCA) is an important tool in multivariate analysis, in particular when...
In this paper, under a proportional model, two families of robust estimates for the proportionality ...
AbstractA robust principal component analysis for samples from a bivariate distribution function is ...
The use of a principal component analysis is considered for multivariate data on families with diffe...
This paper demonstrates the effect of independent noise in principal components of k normally distri...