Bound-constrained Support Vector Machine(SVM) is one of the stateof- art model for binary classification. The decomposition method is currently one of the major methods for training SVMs, especially when the nonlinear kernel is used. In this paper, we proposed two new decomposition algorithms for training bound-constrained SVMs. Projected gradient algorithm and interior point method are combined together to solve the quadratic subproblem effciently. The main difference between the two algorithms is the way of choosing working set. The first one only uses first order derivative information of the model for simplicity. The second one incorporate part of second order information into the process of working set selection, besides the gradient. ...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
Training of support vector machines (SVMs) requires to solve a linearly constrained convex quadratic...
The Support Vector Machine (SVM) is found to be a capable learning machine. It has the ability to ha...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
In this work we present a novel way to solve the sub-problems that originate when using decompositio...
Support Vector Machines (SVM) is a widely adopted technique both for classification and regression p...
The theory of the Support Vector Machine (SVM) algorithm is based on statistical learning theory and...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, ...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
Training of support vector machines (SVMs) requires to solve a linearly constrained convex quadratic...
The Support Vector Machine (SVM) is found to be a capable learning machine. It has the ability to ha...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
This work deals with special decomposition techniques for the large quadratic program arising in tra...
In this work we present a novel way to solve the sub-problems that originate when using decompositio...
Support Vector Machines (SVM) is a widely adopted technique both for classification and regression p...
The theory of the Support Vector Machine (SVM) algorithm is based on statistical learning theory and...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, ...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
We consider a parallel decomposition technique for solving the large quadratic programs arising in t...
Training of support vector machines (SVMs) requires to solve a linearly constrained convex quadratic...