A severe limitation for the application of robust position and scale estimators having a high breakdown point is a consequence of their high computational cost. In this paper we present and analyze several inexpensive robust estimators for the co variance matrix, based on information obtained from projections onto certain sets of directions. The properties of these estimators (breakdown point, computational cost, bias) are analyzed and compared with those of the Stahel-Donoho estimator, through simulation studies. These studies show a clear improvement both on the computational requirements and the bias properties of the Stahel-Donoho estimator. The same ideas are also applied to the construction of procedures to detect outliers in multivar...
Before implementing any multivariate statistical analysis based on empirical covariance matrices, it...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
In this paper we introduce weighted estimators of the location and dispersion of a multivariate data...
A severe limitation for the application of robust position and scale estimators having a high breakd...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
All known robust location and scale estimators with high breakdown point for multivariate sample's a...
International audienceA large dimensional characterization of robust M-estimators of covariance (or ...
A powerful procedure for outlier detection and robust estimation of shape and location with multivar...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
Detecting outliers for multivariate data is difficult and does not work by visual inspection. Mahala...
Classic methods in multivariate analysis require the estimat.ion of mean vectors and covariance matr...
The sample mean can have poor efficiency relative to various alternative estimators under arbitraril...
Before implementing any multivariate statistical analysis based on empirical covariance matrices, it...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
In this paper we introduce weighted estimators of the location and dispersion of a multivariate data...
A severe limitation for the application of robust position and scale estimators having a high breakd...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
All known robust location and scale estimators with high breakdown point for multivariate sample's a...
International audienceA large dimensional characterization of robust M-estimators of covariance (or ...
A powerful procedure for outlier detection and robust estimation of shape and location with multivar...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
Detecting outliers for multivariate data is difficult and does not work by visual inspection. Mahala...
Classic methods in multivariate analysis require the estimat.ion of mean vectors and covariance matr...
The sample mean can have poor efficiency relative to various alternative estimators under arbitraril...
Before implementing any multivariate statistical analysis based on empirical covariance matrices, it...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
In this paper we introduce weighted estimators of the location and dispersion of a multivariate data...