An algorithm is proposed which generates a nonlinear kernel-based separating surface that requires as little as 1% of a large dataset for its explicit evaluation. To generate this nonlinear surface, the entire dataset is used as a constraint in an optimization problem with very few variables corresponding to the 1% of the data kept. The remainder of the data can be thrown away after solving the optimization problem. This is achieved by making use of a rectangular m m kernel K(A;A 0) that greatly reduces the size of the quadratic program to be solved and simpli es the characterization of the nonlinear separating surface. Here, the m rows of A represent the original m data points while the m rows of A represent a greatly reduced ...
In this paper, we improve the efficiency of kernelized support vector machine (SVM) for image classi...
Kernel methods, such as support vector machines (SVMs), have been successfully used in various aspec...
We introduce a principal support vector machine (PSVM) approach that can be used for both linear and...
A chunking procedure [2] utilized in [18] for linear classifiers is proposed here for nonlinear kern...
Abstract—Recently the reduced support vector machine (RSVM) was proposed as an alternate of the stan...
Recently two kinds of reduction techniques which aimed at saving training time for SVM problems with...
An implicit Lagrangian for the dual of a simple reformulation of the standard quadratic program of ...
In this paper we construct the linear support vector machine (SVM) based on the nonlinear rescaling ...
Kernel-based methods for support vector machines (SVM) have shown highly advantageous performance in...
Support Vector Machines (SVM’s) with various kernels have become very successful in pattern classif...
Typically, nonlinear Support Vector Machines (SVMs) produce significantly higher classification qual...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
The problem of extracting a minimal number of data points from a large dataset, in order to generat...
Being among the most popular and efficient classification and regression methods currently available...
In this paper, we improve the efficiency of kernelized support vector machine (SVM) for image classi...
Kernel methods, such as support vector machines (SVMs), have been successfully used in various aspec...
We introduce a principal support vector machine (PSVM) approach that can be used for both linear and...
A chunking procedure [2] utilized in [18] for linear classifiers is proposed here for nonlinear kern...
Abstract—Recently the reduced support vector machine (RSVM) was proposed as an alternate of the stan...
Recently two kinds of reduction techniques which aimed at saving training time for SVM problems with...
An implicit Lagrangian for the dual of a simple reformulation of the standard quadratic program of ...
In this paper we construct the linear support vector machine (SVM) based on the nonlinear rescaling ...
Kernel-based methods for support vector machines (SVM) have shown highly advantageous performance in...
Support Vector Machines (SVM’s) with various kernels have become very successful in pattern classif...
Typically, nonlinear Support Vector Machines (SVMs) produce significantly higher classification qual...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
The problem of extracting a minimal number of data points from a large dataset, in order to generat...
Being among the most popular and efficient classification and regression methods currently available...
In this paper, we improve the efficiency of kernelized support vector machine (SVM) for image classi...
Kernel methods, such as support vector machines (SVMs), have been successfully used in various aspec...
We introduce a principal support vector machine (PSVM) approach that can be used for both linear and...