Effcient training of support vector machines (SVMs) with large-scale samples is of crucial importance in the era of big data. Sequential minimal optimization (SMO) is considered as an effective solution to this challenging task, and the working set selection is one of the key steps in SMO. Various strategies have been developed and implemented for working set selection in LibSVM and Shark. In this work we point out that the algorithm used in LibSVM does not maintain the box-constraints which, nevertheless, are very important for evaluating the final gain of the selection operation. Here, we propose a new algorithm to address this challenge. The proposed algorithm maintains the box-constraints within a selection procedure using a feasible op...
Abstract. LaRank is a multi-class support vector machine training al-gorithm for approximate online ...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
We propose in this work a nested version of the well–known Sequential Minimal Optimization (SMO) alg...
Effcient training of support vector machines (SVMs) with large-scale samples is of crucial importan...
AbstractIn this work we consider nonlinear minimization problems with a single linear equality const...
Sequential minimal optimization (SMO) is quite an efficient algorithm for training the support vecto...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Abstract We introduce iSVM- an incremental algorithm that achieves high speed in training support ve...
The Support Vector Machine is a widely employed machine learning model due to its repeatedly demonst...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
AbstractThe decomposition method is currently one of the major methods for solving the convex quadra...
Working set selection is an important step in decomposition methods for training support vector mach...
The Support Vector Machine (SVM) is one of the most powerful algorithms for machine learning and dat...
Support Vector Machine (SVM) has important properties such as a strong mathematical background and a...
We present new decomposition algorithms for training multi-class support vector machines (SVMs), in ...
Abstract. LaRank is a multi-class support vector machine training al-gorithm for approximate online ...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
We propose in this work a nested version of the well–known Sequential Minimal Optimization (SMO) alg...
Effcient training of support vector machines (SVMs) with large-scale samples is of crucial importan...
AbstractIn this work we consider nonlinear minimization problems with a single linear equality const...
Sequential minimal optimization (SMO) is quite an efficient algorithm for training the support vecto...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Abstract We introduce iSVM- an incremental algorithm that achieves high speed in training support ve...
The Support Vector Machine is a widely employed machine learning model due to its repeatedly demonst...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
AbstractThe decomposition method is currently one of the major methods for solving the convex quadra...
Working set selection is an important step in decomposition methods for training support vector mach...
The Support Vector Machine (SVM) is one of the most powerful algorithms for machine learning and dat...
Support Vector Machine (SVM) has important properties such as a strong mathematical background and a...
We present new decomposition algorithms for training multi-class support vector machines (SVMs), in ...
Abstract. LaRank is a multi-class support vector machine training al-gorithm for approximate online ...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
We propose in this work a nested version of the well–known Sequential Minimal Optimization (SMO) alg...