Discriminant Analysis (DA) is widely applied in many fields. Some recent researches raise the fact that standard DA assumptions, such as a normal distribution of data and equality of the variance-covariance matrices, are not always satisfied. A Mathematical Programming approach (MP) has been frequently used in DA and can be considered a valuable alternative to the classical models of DA. The MP approach provides more flexibility for the process of analysis. The aim of this paper is to address a comparative study in which we analyze the performance of three statistical and some MP methods using linear and nonlinear discriminant functions in two-group classification problems. New classification procedures will be adapted to context of nonline...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...
This paper introduces a nonparametric formulation based on mathematical programming (MP) for solving...
In the last twelve years there has been considerable research interest in mathematical programming a...
This paper introduces a nonparametric formulation-based mathematical programming (MP) for solving t...
Various parametric and nonparametric approaches to multiple discriminant analysis attempt to discrim...
The applications that are related to classification problem are wide-ranging. In fact, differentiati...
Various parametric and nonparametric approaches to multiple discriminant analysis attempt to discrim...
Appropriate training data always play an important role in constructing an efficient classifier to s...
Abstract — Among various statistical and data mining discriminant analysis proposed so far for group...
Both Linear Discriminant Analysis and Support Vector Machines compute hyperplanes that are optimal w...
A review is given on existing work and result of the performance of some discriminant analysis proce...
This study provides a comprehensive review of the literature pertaining to the problem of classifica...
Mathematical programming (MP) can be used for developing classification models for the two–group cl...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...
This paper introduces a nonparametric formulation based on mathematical programming (MP) for solving...
In the last twelve years there has been considerable research interest in mathematical programming a...
This paper introduces a nonparametric formulation-based mathematical programming (MP) for solving t...
Various parametric and nonparametric approaches to multiple discriminant analysis attempt to discrim...
The applications that are related to classification problem are wide-ranging. In fact, differentiati...
Various parametric and nonparametric approaches to multiple discriminant analysis attempt to discrim...
Appropriate training data always play an important role in constructing an efficient classifier to s...
Abstract — Among various statistical and data mining discriminant analysis proposed so far for group...
Both Linear Discriminant Analysis and Support Vector Machines compute hyperplanes that are optimal w...
A review is given on existing work and result of the performance of some discriminant analysis proce...
This study provides a comprehensive review of the literature pertaining to the problem of classifica...
Mathematical programming (MP) can be used for developing classification models for the two–group cl...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...