Visuri, Koivunen and Oja (2003) proposed and illustrated the use of the affine equivariant rank covariance matrix (RC,M) in classical multivariate inference problems. The RCM was shown to be asymptotically multinormal but explicit formulas for the limiting variances and covariances were not given. In this paper the influence functions and the limiting variances and covariances of the RCM and the corresponding scatter estimate are derived in the multivariate elliptical case. Limiting efficiencies axe given in the multivariate normal and t distribution cases. The estimates based on the RCM are highly efficient in the multinormal case, and for heavy-tailed distribution, perform better than those based on the regular covariance matrix. Finite-s...
AbstractEstimation of the covariance matrices in the multivariate balanced one-way random effect mod...
The asymptotic efficiency of the spatial sign covariance matrix (SSCM) relative to affine equivarian...
This thesis deals with univariate and multivariate rank methods in making statistical inference. It ...
Visuri et al (2001) proposed and illustrated the use of the affine equivariant rank covariance matri...
Vis uri et al. (20Gl) proposed and illustrated the use ofthe affine equivariant rank covariance matr...
We consider the affine equivariant sign covariance matrix (SCM) introduced by Visuri et al. (J. Stat...
We consider the affine equivariant sign covariance matrix (SCM) introduced by Visuri et al. (J. Stat...
AbstractWe consider the affine equivariant sign covariance matrix (SCM) introduced by Visuri et al. ...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
In this paper, the influence functions and limiting distributions of the canonical correlations and ...
AbstractIn this paper, the influence functions and limiting distributions of the canonical correlati...
AbstractApplying the non-singular affine transformations AZ + μ to a spherically symmetrically distr...
AbstractEstimation of the covariance matrices in the multivariate balanced one-way random effect mod...
The asymptotic efficiency of the spatial sign covariance matrix (SSCM) relative to affine equivarian...
This thesis deals with univariate and multivariate rank methods in making statistical inference. It ...
Visuri et al (2001) proposed and illustrated the use of the affine equivariant rank covariance matri...
Vis uri et al. (20Gl) proposed and illustrated the use ofthe affine equivariant rank covariance matr...
We consider the affine equivariant sign covariance matrix (SCM) introduced by Visuri et al. (J. Stat...
We consider the affine equivariant sign covariance matrix (SCM) introduced by Visuri et al. (J. Stat...
AbstractWe consider the affine equivariant sign covariance matrix (SCM) introduced by Visuri et al. ...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
The minimum covariance determinant (MCD) scatter estimator is a highly robust estimator for the disp...
In this paper, the influence functions and limiting distributions of the canonical correlations and ...
AbstractIn this paper, the influence functions and limiting distributions of the canonical correlati...
AbstractApplying the non-singular affine transformations AZ + μ to a spherically symmetrically distr...
AbstractEstimation of the covariance matrices in the multivariate balanced one-way random effect mod...
The asymptotic efficiency of the spatial sign covariance matrix (SSCM) relative to affine equivarian...
This thesis deals with univariate and multivariate rank methods in making statistical inference. It ...