In this paper we maximize the efficiency of a multivariate S-estimator under a constraint on the breakdown point. In the linear regression model, it is known that the highest possible efficiency of a maximum breakdown S-estimator is bounded above by 33% for Gaussian errors. We prove the surprising result that in dimensions larger than one, the efficiency of a maxi- mum breakdown S-estimator of location and scatter can get arbitrarily close to 100%, by an appropriate selection of the loss function
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
It is known that the efficiency at the normal of M estimates of multivariate location and scatter in...
We deal with the equivariant estimation of scatter and location for p-dimensional data, giving empha...
In this paper we maximize the efficiency of a multivariate S-estimator under a constraint on the bre...
In this paper we introduce generalized S-estimators for the multivariate regression model. This clas...
AbstractIn this paper we introduce generalized S-estimators for the multivariate regression model. T...
In this paper we introduce generalized S-estimators for the multivariate regression model This class...
In this paper we consider S-estimators for multivariate regression. We study the robustness of the e...
In this paper we consider S-estimators for multivariate regression. We study the robustness of the e...
For the problem of robust estimation of multivariate location and shape, defilllng S-estimators usin...
A good robust functional should, if possible, be efficient at the model, smooth, and have a high bre...
We discuss the relation between S-estimators and M-estimators of multivariate location and covarianc...
In this paper we introduce a new type of positive-breakdown regression method, called a generalized ...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
In this paper we introduce a new type of positive-breakdown regression method, called a generalized ...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
It is known that the efficiency at the normal of M estimates of multivariate location and scatter in...
We deal with the equivariant estimation of scatter and location for p-dimensional data, giving empha...
In this paper we maximize the efficiency of a multivariate S-estimator under a constraint on the bre...
In this paper we introduce generalized S-estimators for the multivariate regression model. This clas...
AbstractIn this paper we introduce generalized S-estimators for the multivariate regression model. T...
In this paper we introduce generalized S-estimators for the multivariate regression model This class...
In this paper we consider S-estimators for multivariate regression. We study the robustness of the e...
In this paper we consider S-estimators for multivariate regression. We study the robustness of the e...
For the problem of robust estimation of multivariate location and shape, defilllng S-estimators usin...
A good robust functional should, if possible, be efficient at the model, smooth, and have a high bre...
We discuss the relation between S-estimators and M-estimators of multivariate location and covarianc...
In this paper we introduce a new type of positive-breakdown regression method, called a generalized ...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
In this paper we introduce a new type of positive-breakdown regression method, called a generalized ...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
It is known that the efficiency at the normal of M estimates of multivariate location and scatter in...
We deal with the equivariant estimation of scatter and location for p-dimensional data, giving empha...