A feature ranking scheme for multilayer perceptron (MLP) ensembles is proposed, along with a stopping criterion based upon the out-of-bootstrap estimate. To solve multi-class problems feature ranking is combined with modified error-correcting output coding. Experimental results on benchmark data demonstrate the versatility of the MLP base classifier in removing irrelevant features
Multiclass multilabel perceptrons (MMP) have been proposed as an efficient incremental training algo...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
A feature ranking scheme for multilayer perceptron (MLP) ensembles is proposed, along with a stoppin...
A feature ranking scheme for multilayer perceptron (MLP) ensembles is proposed, along with a stoppin...
Machine learning research is active in resolving issues that cope with algorithm complexity, efficie...
With rapid development of computer and information technology that can improve a large number of app...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
With rapid development of computer and information technology that can improve a large number of app...
With rapid development of computer and information technology that can improve a large number of app...
Multiclass Multilabel Perceptrons (MMP) are an efficient incremental algorithm for training a team o...
Multiclass multilabel perceptrons (MMP) have been proposed as an efficient incremental training algo...
Multiclass multilabel perceptrons (MMP) have been proposed as an efficient incremental training algo...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
A feature ranking scheme for multilayer perceptron (MLP) ensembles is proposed, along with a stoppin...
A feature ranking scheme for multilayer perceptron (MLP) ensembles is proposed, along with a stoppin...
Machine learning research is active in resolving issues that cope with algorithm complexity, efficie...
With rapid development of computer and information technology that can improve a large number of app...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
International audienceA crucial issue for Machine Learning and Data Mining is Feature Selection, sel...
With rapid development of computer and information technology that can improve a large number of app...
With rapid development of computer and information technology that can improve a large number of app...
Multiclass Multilabel Perceptrons (MMP) are an efficient incremental algorithm for training a team o...
Multiclass multilabel perceptrons (MMP) have been proposed as an efficient incremental training algo...
Multiclass multilabel perceptrons (MMP) have been proposed as an efficient incremental training algo...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
This paper addresses the problem of feature subset selection for classification tasks. In particular...