This paper introduces a nonparametric formulation-based mathematical programming (MP) for solving the classification problem in discriminant analysis. This method differs from previously proposed MP-based models in that, even though the final discriminant function is linear in terms of the parameters to be estimated, the formulation is quadratic in terms of the predictor (attribute) variables. By including second order (i.e., quadratic and cross-product) terms of the attribute variables, the model is similar in concept to the usual treatment of multiple predictor variables in statistical methods such as Fisher's linear discriminant analysis, and allows an analysis of how including nonlinear terms and interaction affect the predictive abil...
An alternative nonlinear multiclass discriminant algorithm is presented.This algorithm is based on t...
In the last twelve years there has been considerable research interest in mathematical programming a...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
This paper introduces a nonparametric formulation based on mathematical programming (MP) for solving...
Discriminant Analysis (DA) is widely applied in many fields. Some recent researches raise the fact t...
In this manuscript, we introduce the PC-based software package RAGNU, a utility program that can be ...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...
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...
Nonparametric analogs to Wilk's [Lambda], Pillai's V, and Hotelling's T [superscript 2, subscript 0]...
Mathematical programming (MP) can be used for developing classification models for the two–group cl...
In this paper, we introduce a nonparametric mathematical programming (MP) approach for solving the b...
Abstract—In this study, we revisit quadratic discriminant analysis (QDA). For this purpose, we prese...
Various parametric and nonparametric approaches to multiple discriminant analysis attempt to discrim...
Two linkable computer programs have been developed for a special case of nonlinear discriminant anal...
An alternative nonlinear multiclass discriminant algorithm is presented.This algorithm is based on t...
In the last twelve years there has been considerable research interest in mathematical programming a...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
This paper introduces a nonparametric formulation based on mathematical programming (MP) for solving...
Discriminant Analysis (DA) is widely applied in many fields. Some recent researches raise the fact t...
In this manuscript, we introduce the PC-based software package RAGNU, a utility program that can be ...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...
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...
Nonparametric analogs to Wilk's [Lambda], Pillai's V, and Hotelling's T [superscript 2, subscript 0]...
Mathematical programming (MP) can be used for developing classification models for the two–group cl...
In this paper, we introduce a nonparametric mathematical programming (MP) approach for solving the b...
Abstract—In this study, we revisit quadratic discriminant analysis (QDA). For this purpose, we prese...
Various parametric and nonparametric approaches to multiple discriminant analysis attempt to discrim...
Two linkable computer programs have been developed for a special case of nonlinear discriminant anal...
An alternative nonlinear multiclass discriminant algorithm is presented.This algorithm is based on t...
In the last twelve years there has been considerable research interest in mathematical programming a...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...