Support Vector Machine (SVM) has important properties such as a strong mathematical background and a better generalization capability with respect to other classification methods. On the other hand, the major drawback of SVM occurs in its training phase, which is computationally expensive and highly dependent on the size of input data set. In this study, a new algorithm to speed up the training time of SVM is presented; this method selects a small and representative amount of data from data sets to improve training time of SVM. The novel method uses an induction tree to reduce the training data set for SVM, producing a very fast and high-accuracy algorithm. According to the results, the proposed algorithm produces results with similar accur...
Support vector machines (SVMs) are considered to be the best machine learning algorithms for minimiz...
The challenges of the classification for the large-scale and high-dimensional datasets are: (1) It r...
AbstractSupport vector machine is a classification model which has been widely used in many nonlinea...
Support Vector Machine (SVM) has important properties such as a strong mathematical background and a...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Although the generalization power of (axis-parallel) decision tree can be compromised by the strict ...
Several algorithms have been proposed in the literature for building decision trees (DT) for large d...
We propose a new technique for support vector machines (SVMs) in tree structures for multiclass clas...
Abstract We introduce iSVM- an incremental algorithm that achieves high speed in training support ve...
Part 7: Optimization-SVM (OPSVM)International audienceAlthough Support Vector Machines (SVMs) are co...
We propose a classification method based on a decision tree whose nodes consist of linear Support Ve...
In this communication we present a new algorithm for solving Support Vector Classifiers (SVC) with l...
Support Vector Machine (SVM) is one of the important classification method used in many areas. Norma...
Training a support vector machine on a data set of huge size with thousands of classes is a challeng...
Support vector machines (SVMs) are considered to be the best machine learning algorithms for minimiz...
The challenges of the classification for the large-scale and high-dimensional datasets are: (1) It r...
AbstractSupport vector machine is a classification model which has been widely used in many nonlinea...
Support Vector Machine (SVM) has important properties such as a strong mathematical background and a...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Although the generalization power of (axis-parallel) decision tree can be compromised by the strict ...
Several algorithms have been proposed in the literature for building decision trees (DT) for large d...
We propose a new technique for support vector machines (SVMs) in tree structures for multiclass clas...
Abstract We introduce iSVM- an incremental algorithm that achieves high speed in training support ve...
Part 7: Optimization-SVM (OPSVM)International audienceAlthough Support Vector Machines (SVMs) are co...
We propose a classification method based on a decision tree whose nodes consist of linear Support Ve...
In this communication we present a new algorithm for solving Support Vector Classifiers (SVC) with l...
Support Vector Machine (SVM) is one of the important classification method used in many areas. Norma...
Training a support vector machine on a data set of huge size with thousands of classes is a challeng...
Support vector machines (SVMs) are considered to be the best machine learning algorithms for minimiz...
The challenges of the classification for the large-scale and high-dimensional datasets are: (1) It r...
AbstractSupport vector machine is a classification model which has been widely used in many nonlinea...