Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. This method relies on the sample averages and covariance ma- trices computed from the different groups constituting the training sample. Since sample averages and covariance matrices are not robust, it is proposed to use robust estimators of location and covariance instead, yielding a robust version of Fisher's method. In this paper expressions are derived for the influence that an observation in the training set has on the error rate of the Fisher method for multiple linear discriminant analysis. These influence functions on the error rate turn out to be unbounded for the classical rule, but bounded when using a robust approach. Using these inf...
A review is given on existing work and result of the performance of some discriminant analysis proce...
A new linear discrimination rule, designed for two-group problems with many correlated variables, is...
Linear Discriminant Analysis (LDA) is a supervised classification technique concerned with the relat...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
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...
Abstract: Discriminant analysis for multiple groups is often done using Fisher’s rule, and can be us...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on t...
The authors consider a robust linear discriminant function based on high breakdown location and cova...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
Linear discriminant analysis (LDA) is a widely used multivariate technique for pattern classificatio...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
The performance of four discriminant analysis procedures for the classification of observations from...
A review is given on existing work and result of the performance of some discriminant analysis proce...
A new linear discrimination rule, designed for two-group problems with many correlated variables, is...
Linear Discriminant Analysis (LDA) is a supervised classification technique concerned with the relat...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
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...
Abstract: Discriminant analysis for multiple groups is often done using Fisher’s rule, and can be us...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on t...
The authors consider a robust linear discriminant function based on high breakdown location and cova...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
Linear discriminant analysis (LDA) is a widely used multivariate technique for pattern classificatio...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
The performance of four discriminant analysis procedures for the classification of observations from...
A review is given on existing work and result of the performance of some discriminant analysis proce...
A new linear discrimination rule, designed for two-group problems with many correlated variables, is...
Linear Discriminant Analysis (LDA) is a supervised classification technique concerned with the relat...