Evolutionary Learning proceeds by evolving a population of classifiers, from which it generally returns (with some notable exceptions) the single best-of-run classifier as final result. In the meanwhile, Ensemble Learning, one of the most efficient approaches in supervised Machine Learning for the last decade, proceeds by building a population of diverse classifiers. Ensemble Learning with Evolutionary Computation thus receives increasing attention. The Evolutionary Ensemble Lear\-ning (EEL) approach presented in this paper features two contributions. First, a new fitness function, inspired by co-evolution and enforcing the classifier diversity, is presented. Further, a new selection criterion based on the classification margin is proposed....
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Proceeding of: Twenty-First International Florida Artificial Intelligence Research Society Conferenc...
Evolutionary Learning proceeds by evolving a population of classifiers, from which it generally retu...
This paper presents a comprehensive review of evolutionary algorithms that learn an ensemble of pred...
Building ensembles of classifiers is an active area of research for machine learning, with the funda...
Ensemble methods have shown the poten-tial to improve on the performance of indi-vidual classiers as...
Evolutionary feature creation for ensembles is about the generation of new attributes useful to buil...
Learning ensembles by bagging can substantially improve the generalization performance of low-bias, ...
We are going to implement the "GA-SEFS" by Tsymbal and analyse experimentally its performance depend...
Ensembles of classifiers are a very popular type of method for performing classification, due to the...
In this paper we propose a meta-evolutionary approach to improve on the performance of individual cl...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
Ensemble learning is one of the most powerful extensions for improving upon individual machine learn...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Proceeding of: Twenty-First International Florida Artificial Intelligence Research Society Conferenc...
Evolutionary Learning proceeds by evolving a population of classifiers, from which it generally retu...
This paper presents a comprehensive review of evolutionary algorithms that learn an ensemble of pred...
Building ensembles of classifiers is an active area of research for machine learning, with the funda...
Ensemble methods have shown the poten-tial to improve on the performance of indi-vidual classiers as...
Evolutionary feature creation for ensembles is about the generation of new attributes useful to buil...
Learning ensembles by bagging can substantially improve the generalization performance of low-bias, ...
We are going to implement the "GA-SEFS" by Tsymbal and analyse experimentally its performance depend...
Ensembles of classifiers are a very popular type of method for performing classification, due to the...
In this paper we propose a meta-evolutionary approach to improve on the performance of individual cl...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
Ensemble learning is one of the most powerful extensions for improving upon individual machine learn...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Proceeding of: Twenty-First International Florida Artificial Intelligence Research Society Conferenc...