The authors consider a robust linear discriminant function based on high breakdown location and covariance matrix estimators. They derive influence functions for the estimators of the parameters of the discriminant function and for the associated classification error. The most B-robust estimator is determined within the class of multivariate S-estimators. This estimator, which minimizes the maximal influence that an outlier can have on the classification error, is also the most B-robust location S-estimator. A comparison of the most B-robust estimator with the more familiar biweight S-estimator is made.status: publishe
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
The classification rules of linear discriminant analysis are defined by the true mean vectors and th...
Linear Discriminant Analysis (LDA) is a supervised classification technique concerned with the relat...
The authors consider a robust linear discriminant function based on high breakdown location and cova...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on ...
Abstract: Linear discriminant analysis is typically carried out using Fisher’s method. This method r...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
We consider S-estimators of multivariate location and common dispersion matrix in multiple populatio...
SUMMARY. Robust M-estimation procedures for relevant parameters of discriminant analysis are develop...
For the problem of robust estimation of multivariate location and shape, defilllng S-estimators usin...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on t...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
We consider S-estimators of multivariate location and common dispersion matrix in multiple populatio...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
The classification rules of linear discriminant analysis are defined by the true mean vectors and th...
Linear Discriminant Analysis (LDA) is a supervised classification technique concerned with the relat...
The authors consider a robust linear discriminant function based on high breakdown location and cova...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on ...
Abstract: Linear discriminant analysis is typically carried out using Fisher’s method. This method r...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
We consider S-estimators of multivariate location and common dispersion matrix in multiple populatio...
SUMMARY. Robust M-estimation procedures for relevant parameters of discriminant analysis are develop...
For the problem of robust estimation of multivariate location and shape, defilllng S-estimators usin...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on t...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
We consider S-estimators of multivariate location and common dispersion matrix in multiple populatio...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
The classification rules of linear discriminant analysis are defined by the true mean vectors and th...
Linear Discriminant Analysis (LDA) is a supervised classification technique concerned with the relat...