AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and classification method. It has been successfully applied in many fields of work and research. As it happens with other multivariate methods, discriminant analysis is highly vulnerable to the presence of outliers that commonly occur in many real world data sets. The lack of robustness of the classical estimators on which the linear discriminant function is based is a severe disadvantage and several authors have worked to find efficient ways to prevent the damage that outliers can cause. This paper focuses on the projection-pursuit approach to discriminant analysis. The projection-pursuit estimators are described and theoretical properties are ...
The results of a standard Principal Component Analysis (PCA) can be affected by the presence of outl...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
In this paper, a two group linear discriminant function (LDF) is derived by minimizing Gini’s transv...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
Abstract This paper starts with a short review of previous work on robust discriminant analysis with...
Two projection indices are proposed for the construction of robust 2-sample linear discriminant func...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
We study the estimation of the linear discriminant with projection pursuit, a method that is unsuper...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
This paper aims at comparing the concept of data depth to classification and classification by proje...
We explore the properties of projection pursuit discriminant analysis. This discriminant method is v...
Abstract: Linear discriminant analysis is typically carried out using Fisher’s method. This method r...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on ...
This article extends the analysis of multivariate transformations to linear and quadratic discrimina...
In this paper, a two group linear discriminant function (LDF) is derived by minimizing Gini’s transv...
The results of a standard Principal Component Analysis (PCA) can be affected by the presence of outl...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
In this paper, a two group linear discriminant function (LDF) is derived by minimizing Gini’s transv...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
Abstract This paper starts with a short review of previous work on robust discriminant analysis with...
Two projection indices are proposed for the construction of robust 2-sample linear discriminant func...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
We study the estimation of the linear discriminant with projection pursuit, a method that is unsuper...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
This paper aims at comparing the concept of data depth to classification and classification by proje...
We explore the properties of projection pursuit discriminant analysis. This discriminant method is v...
Abstract: Linear discriminant analysis is typically carried out using Fisher’s method. This method r...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on ...
This article extends the analysis of multivariate transformations to linear and quadratic discrimina...
In this paper, a two group linear discriminant function (LDF) is derived by minimizing Gini’s transv...
The results of a standard Principal Component Analysis (PCA) can be affected by the presence of outl...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
In this paper, a two group linear discriminant function (LDF) is derived by minimizing Gini’s transv...