AbstractA good robust functional should, if possible, be efficient at the model, smooth, and have a high breakdown point. M-estimators can be made efficient and Fréchet differentiable by choosing appropriate ψ-functions but they have a breakdown point of at most 1(p + 1) in p dimensions. On the other hand, the local smoothness of known high breakdown functionals has not been investigated. It is known that Rousseeuw's minimum volume ellipsoid estimator is not differentiable and that S-estimators based on smooth functions force a trade-off between efficiency and breakdown point. However, by using a two-step M-estimator based on the minimum volume ellipsoid we show that it is possible to obtain a highly efficient, Fréchet differentiable estima...
Among the most well known estimators of multivariate location and scatter is the Minimum Volume Elli...
Rousseeuw's minimum volume estimator for multivariate location and dispersion parameters has the hig...
High breakdown estimation allows one to get reasonable estimates of the parameters from a sample of ...
A good robust functional should, if possible, be efficient at the model, smooth, and have a high bre...
In this paper we maximize the efficiency of a multivariate S-estimator under a constraint on the bre...
Estimators which have locally uniform expansions are shown in this paper to be asymptotically equiva...
The minimum volume ellipsoid (MVE) estimator is based on the smallest volume ellipsoid that covers h...
In a robust analysis, the minimum volume ellipsoid (MVE) estimator is very often used to estimate bo...
In a robust analysis, the minimum volume ellipsoid (MVE) estimator is very often used to estimate bo...
Estimating multivariate location and scatter with both affine equivariance and positive breakdown ha...
For the problem of robust estimation of multivariate location and shape, defilllng S-estimators usin...
Several equivariant estimators of multivariate location and scatter are studied, which are highly ro...
All known robust location and scale estimators with high breakdown point for multivariate samples ar...
AbstractWe consider S-estimators of multivariate location and common dispersion matrix in multiple p...
We propose an affine equivariant estimator of multivariate location that combines a high breakdown p...
Among the most well known estimators of multivariate location and scatter is the Minimum Volume Elli...
Rousseeuw's minimum volume estimator for multivariate location and dispersion parameters has the hig...
High breakdown estimation allows one to get reasonable estimates of the parameters from a sample of ...
A good robust functional should, if possible, be efficient at the model, smooth, and have a high bre...
In this paper we maximize the efficiency of a multivariate S-estimator under a constraint on the bre...
Estimators which have locally uniform expansions are shown in this paper to be asymptotically equiva...
The minimum volume ellipsoid (MVE) estimator is based on the smallest volume ellipsoid that covers h...
In a robust analysis, the minimum volume ellipsoid (MVE) estimator is very often used to estimate bo...
In a robust analysis, the minimum volume ellipsoid (MVE) estimator is very often used to estimate bo...
Estimating multivariate location and scatter with both affine equivariance and positive breakdown ha...
For the problem of robust estimation of multivariate location and shape, defilllng S-estimators usin...
Several equivariant estimators of multivariate location and scatter are studied, which are highly ro...
All known robust location and scale estimators with high breakdown point for multivariate samples ar...
AbstractWe consider S-estimators of multivariate location and common dispersion matrix in multiple p...
We propose an affine equivariant estimator of multivariate location that combines a high breakdown p...
Among the most well known estimators of multivariate location and scatter is the Minimum Volume Elli...
Rousseeuw's minimum volume estimator for multivariate location and dispersion parameters has the hig...
High breakdown estimation allows one to get reasonable estimates of the parameters from a sample of ...