In this paper, we introduce a set of new kernel functions derived from the generalized Legendre polynomials to obtain more robust and higher support vector machine (SVM) classification accuracy. The generalized Legendre kernel functions are suggested to provide a value of how two given vectors are like each other by changing the inner product of these two vectors into a greater dimensional space. The proposed kernel functions satisfy the Mercer’s condition and orthogonality properties for reaching the optimal result with low number support vector (SV). For that, the new set of Legendre kernel functions could be utilized in classification applications as effective substitutes to those generally used like Gaussian, Polynomial and Wavelet kern...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract:- Support Vector Machines (SVMs) are a relatively new learning method used for binary class...
Abstract. The Support Vector Machine (SVM) has emerged in recent years as a popular approach to the ...
Abstract: In this paper we introduce a new kernel function that could improve the SVMs classificati...
In this paper, we introduce a new kernel function for improving the accuracy of the Support Vector M...
Abstract. The tutorial starts with an overview of the concepts of VC dimension and structural risk m...
The efficiency of support vector machine in practice is closely related to the optimal selection of ...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...
A kernel function is an important component in the support vector machine (SVM) kernel-based classif...
In this paper we review some basic concepts of the theory of Support Vedor Machines and derive some ...
The problem of combining different sources of information arises in several situations, for instance...
The importance of the support vector machine and its applicability to a wide range of problems is we...
We derive the correspondence between regularization operators used in Regularization Networks and Hi...
We describe a data complexity approach to kernel se-lection based on the behavior of polynomial and ...
n this paper a correspondence is derived between regularization operators used in regularization net...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract:- Support Vector Machines (SVMs) are a relatively new learning method used for binary class...
Abstract. The Support Vector Machine (SVM) has emerged in recent years as a popular approach to the ...
Abstract: In this paper we introduce a new kernel function that could improve the SVMs classificati...
In this paper, we introduce a new kernel function for improving the accuracy of the Support Vector M...
Abstract. The tutorial starts with an overview of the concepts of VC dimension and structural risk m...
The efficiency of support vector machine in practice is closely related to the optimal selection of ...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...
A kernel function is an important component in the support vector machine (SVM) kernel-based classif...
In this paper we review some basic concepts of the theory of Support Vedor Machines and derive some ...
The problem of combining different sources of information arises in several situations, for instance...
The importance of the support vector machine and its applicability to a wide range of problems is we...
We derive the correspondence between regularization operators used in Regularization Networks and Hi...
We describe a data complexity approach to kernel se-lection based on the behavior of polynomial and ...
n this paper a correspondence is derived between regularization operators used in regularization net...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract:- Support Vector Machines (SVMs) are a relatively new learning method used for binary class...
Abstract. The Support Vector Machine (SVM) has emerged in recent years as a popular approach to the ...