The support vector machine (SVM) has been spotlighted in the machine learning community because of its theoretical soundness and practical performance. When applied to a large data set, however, it requires a large memory and a long time for training. To cope with the practical difficulty, we propose a pattern selection algorithm based on neighborhood properties. The idea is to select only the patterns that are likely to be located near the decision boundary. Those patterns are expected to be more informative than the randomly selected patterns. The experimental results provide promising evidence that it is possible to successfully employ the proposed algorithm ahead of SVM training
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Support Vector Machine (SVM) results in a good generalization performance by employing the Structura...
© 2012 IEEE. It is time consuming to train support vector regression (SVR) for large-scale problems ...
The support vector machine (SVM) has been spotlighted in the machine learning community because of i...
Support Vector Machine (SVM) has been spotlighted in the machine learning community thanks to its th...
If the training pattern set is large, it takes a large memory and a long time to train support vecto...
We propose a pre-selection method for training support vector machines (SVM) with a largescale datas...
Pattern selection methods have been traditionally developed with a dependency on a specific classifi...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Support vector machines (SVMs) rely on the inherent geometry of a data set to classify training data...
The problem of feature selection for Support Vector Machines (SVMs) classification is investigated i...
Statistical machine learning algorithms building on patterns found by pattern mining algorithms have...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
Abstract. Support vector machines (SVMs) rely on the inherent geom-etry of a data set to classify tr...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Support Vector Machine (SVM) results in a good generalization performance by employing the Structura...
© 2012 IEEE. It is time consuming to train support vector regression (SVR) for large-scale problems ...
The support vector machine (SVM) has been spotlighted in the machine learning community because of i...
Support Vector Machine (SVM) has been spotlighted in the machine learning community thanks to its th...
If the training pattern set is large, it takes a large memory and a long time to train support vecto...
We propose a pre-selection method for training support vector machines (SVM) with a largescale datas...
Pattern selection methods have been traditionally developed with a dependency on a specific classifi...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Support vector machines (SVMs) rely on the inherent geometry of a data set to classify training data...
The problem of feature selection for Support Vector Machines (SVMs) classification is investigated i...
Statistical machine learning algorithms building on patterns found by pattern mining algorithms have...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
Abstract. Support vector machines (SVMs) rely on the inherent geom-etry of a data set to classify tr...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
Training SVM requires large memory and long cpu time when the pattern set is large. To alleviate the...
Support Vector Machine (SVM) results in a good generalization performance by employing the Structura...
© 2012 IEEE. It is time consuming to train support vector regression (SVR) for large-scale problems ...