AbstractThis article proposes a reweighted estimator of multivariate location and scatter, with weights adaptively computed from the data. Its breakdown point and asymptotic behavior under elliptical distributions are established. This adaptive estimator is able to attain simultaneously the maximum possible breakdown point for affine equivariant estimators and full asymptotic efficiency at the multivariate normal distribution. For the special case of hard-rejection weights and the MCD as initial estimator, it is shown to be more efficient than its non-adaptive counterpart for a broad range of heavy-tailed elliptical distributions. A Monte Carlo study shows that the adaptive estimator is as robust as its non-adaptive relative for several typ...
The minimum volume ellipsoid (MVE) estimator is based on the smallest volume ellipsoid that covers h...
The sample mean can have poor efficiency relative to various alternative estimators under arbitraril...
AbstractThis paper treats strong convergence of adaptive multivariate recursive M-estimators of loca...
We investigate the asymptotic behavior ofa weighted sample mean and covariance, where the weights ar...
We deal with the equivariant estimation of scatter and location for p-dimensional data, giving empha...
We investigate the asymptotic behavior of a weighted sample mean and covariance, where the weights a...
The iteratively reweighting algorithm is one of the widely used algorithm to compute the M-estimates...
This article derives the influence function of the Stahel-Donoho estimator of multivariate location ...
Modeling and understanding multivariate extreme events is challenging, but of great importance invar...
We consider estimating the tail-index of a distribution under the assumption of multivariate ellipti...
We consider the problem of robust estimation of the scatter matrix of an elliptical distribution whe...
Two main issues regarding data quality are data contamination (outliers) and data completion (missin...
The minimum covariance determinant (MCD) estimator of scatter is one of the most famous robust proce...
An affine equivariant estimate of multivariate location based on an adaptive transformation and retr...
We introduce a robust method for multivariate regression based on robust estimation of the joint loc...
The minimum volume ellipsoid (MVE) estimator is based on the smallest volume ellipsoid that covers h...
The sample mean can have poor efficiency relative to various alternative estimators under arbitraril...
AbstractThis paper treats strong convergence of adaptive multivariate recursive M-estimators of loca...
We investigate the asymptotic behavior ofa weighted sample mean and covariance, where the weights ar...
We deal with the equivariant estimation of scatter and location for p-dimensional data, giving empha...
We investigate the asymptotic behavior of a weighted sample mean and covariance, where the weights a...
The iteratively reweighting algorithm is one of the widely used algorithm to compute the M-estimates...
This article derives the influence function of the Stahel-Donoho estimator of multivariate location ...
Modeling and understanding multivariate extreme events is challenging, but of great importance invar...
We consider estimating the tail-index of a distribution under the assumption of multivariate ellipti...
We consider the problem of robust estimation of the scatter matrix of an elliptical distribution whe...
Two main issues regarding data quality are data contamination (outliers) and data completion (missin...
The minimum covariance determinant (MCD) estimator of scatter is one of the most famous robust proce...
An affine equivariant estimate of multivariate location based on an adaptive transformation and retr...
We introduce a robust method for multivariate regression based on robust estimation of the joint loc...
The minimum volume ellipsoid (MVE) estimator is based on the smallest volume ellipsoid that covers h...
The sample mean can have poor efficiency relative to various alternative estimators under arbitraril...
AbstractThis paper treats strong convergence of adaptive multivariate recursive M-estimators of loca...