Training a support vector machine on a data set of huge size with thousands of classes is a challenging problem. This paper proposes an efficient algorithm to solve this problem. The key idea is to introduce a parallel optimization step to quickly remove most of the nonsupport vectors, where block diagonal matrices are used to approximate the original kernel matrix so that the original problem can be split into hundreds of subproblems which can be solved more efficiently. In addition, some effective strategies such as kernel caching and efficient computation of kernel matrix are integrated to speed up the training process. Our analysis of the proposed algorithm shows that its time complexity grows linearly with the number of classes and siz...
Abstract We introduce iSVM- an incremental algorithm that achieves high speed in training support ve...
Support Vector Machines (SVMs) suffer from a widely recognized scalability problem in both memory us...
The parallel solution of the large quadratic programming problem arising in training 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...
This work deals with aspects of support vector learning for large-scale data mining tasks. Based on ...
This paper presents a decomposition method for efficiently constructing ℓ1-norm Support Vector Machi...
Classification algorithms have been widely used in many application domains. Most of these domains d...
The Support Vector Machine (SVM) is a supervised algorithm for the solution of classification and re...
Over the past few years, considerable progress has been made in the area of machine learning. Howeve...
Support Vector Machines (SVMs) suffer from a widely recognized scalability problem in both memory us...
Recently two kinds of reduction techniques which aimed at saving training time for SVM problems with...
We present new decomposition algorithms for training multi-class support vector machines (SVMs), in ...
International audienceWe propose a new algorithm for training a linear Support Vector Machine in the...
A parallel software to train linear and nonlinear SVMs for classification problems is presented, whi...
Abstract We introduce iSVM- an incremental algorithm that achieves high speed in training support ve...
Support Vector Machines (SVMs) suffer from a widely recognized scalability problem in both memory us...
The parallel solution of the large quadratic programming problem arising in training 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...
This work deals with aspects of support vector learning for large-scale data mining tasks. Based on ...
This paper presents a decomposition method for efficiently constructing ℓ1-norm Support Vector Machi...
Classification algorithms have been widely used in many application domains. Most of these domains d...
The Support Vector Machine (SVM) is a supervised algorithm for the solution of classification and re...
Over the past few years, considerable progress has been made in the area of machine learning. Howeve...
Support Vector Machines (SVMs) suffer from a widely recognized scalability problem in both memory us...
Recently two kinds of reduction techniques which aimed at saving training time for SVM problems with...
We present new decomposition algorithms for training multi-class support vector machines (SVMs), in ...
International audienceWe propose a new algorithm for training a linear Support Vector Machine in the...
A parallel software to train linear and nonlinear SVMs for classification problems is presented, whi...
Abstract We introduce iSVM- an incremental algorithm that achieves high speed in training support ve...
Support Vector Machines (SVMs) suffer from a widely recognized scalability problem in both memory us...
The parallel solution of the large quadratic programming problem arising in training support vector...