This paper presents a decomposition method for efficiently constructing ℓ1-norm Support Vector Machines (SVMs). The decomposition algorithm introduced in this paper possesses many desirable properties. For example, it is provably convergent, scales well to large datasets, is easy to implement, and can be extended to handle support vector regression and other SVM variants. We demonstrate the efficiency of our algorithm by training on (dense) synthetic datasets of sizes up to 20 million points (in ℝ32). The results show our algorithm to be several orders of magnitude faster than a previously published method for the same task. We also present experimental results on real data setsour method is seen to be not only very fast, but also highly c...
Training a support vector machine (SVM) leads to a quadratic optimization problem with bound constra...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
The theory of the Support Vector Machine (SVM) algorithm is based on statistical learning theory and...
Support Vector Machines (SVMs) for regression problems are trained by solving a quadratic optimizati...
Training a support vector machine on a data set of huge size with thousands of classes is a challeng...
The main contribution of this dissertation is the development of a method to train a Support Vector ...
The main contribution of this dissertation is the development of a method to train a Support Vector ...
This work deals with aspects of support vector machine learning for large-scale data mining tasks. B...
Over recent years we have seen the appearance of huge datasets that do not fit into memory and do no...
The Support Vector Machine (SVM) is found to be a capable learning machine. It has the ability to ha...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
In this paper we introduce two formulations for training support vector machines using linear progra...
A new linear Support Vector Machine algorithm and solver are presented. The algorithm is in a twofol...
This work deals with aspects of support vector learning for large-scale data mining tasks. Based on ...
Training a support vector machine (SVM) leads to a quadratic optimization problem with bound constra...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...
The theory of the Support Vector Machine (SVM) algorithm is based on statistical learning theory and...
Support Vector Machines (SVMs) for regression problems are trained by solving a quadratic optimizati...
Training a support vector machine on a data set of huge size with thousands of classes is a challeng...
The main contribution of this dissertation is the development of a method to train a Support Vector ...
The main contribution of this dissertation is the development of a method to train a Support Vector ...
This work deals with aspects of support vector machine learning for large-scale data mining tasks. B...
Over recent years we have seen the appearance of huge datasets that do not fit into memory and do no...
The Support Vector Machine (SVM) is found to be a capable learning machine. It has the ability to ha...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
In this paper we introduce two formulations for training support vector machines using linear progra...
A new linear Support Vector Machine algorithm and solver are presented. The algorithm is in a twofol...
This work deals with aspects of support vector learning for large-scale data mining tasks. Based on ...
Training a support vector machine (SVM) leads to a quadratic optimization problem with bound constra...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
In this paper we propose some improvements to a recent decomposition technique for the large quadrat...