Self-adaptation is a key feature of evolutionary algorithms (EAs). Although EAs have been used successfully to solve a wide variety of problems, the performance of this technique depends heavily on the selection of the EA parameters. Moreover, the process of setting such parameters is considered a time-consuming task. Several research works have tried to deal with this problem; however, the construction of algorithms letting the parameters adapt themselves to the problem is a critical and open problem of EAs. This work proposes a novel ensemble machine learning method that is able to learn rules, solve problems in a parallel way and adapt parameters used by its components. A self-adaptive ensemble machine consists of simultaneously working ...
Automated Machine Learning (Auto-ML) is an emerging area of ML which consists of automatically selec...
This paper presents an investigation into exploiting the population-based nature of learning classif...
This paper presents an investigation into exploiting the population-based nature of learning classif...
In this paper we propose a meta-evolutionary approach to improve on the performance of individual cl...
Building ensembles of classifiers is an active area of research for machine learning, with the funda...
Evolutionary Algorithms (EAs) are population based algorithms that can tackle complex optimization p...
Abstract. Ensemble algorithms can improve the performance of a given learning algorithm through the ...
Self-adaption capacity is an important element in Evolutionary Algorithms. Self-adaption properties ...
Ensemble algorithms can improve the performance of a given learning algorithm through the combinatio...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
Ensemble methods have shown the poten-tial to improve on the performance of indi-vidual classiers as...
Real-world optimisation often involves uncertainty. Previous studies proved that evolutionary algori...
This paper presents a novel ensemble learning method based on evolutionary algorithms to cope with d...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
This paper presents an investigation into exploiting the population-based nature of learning classif...
Automated Machine Learning (Auto-ML) is an emerging area of ML which consists of automatically selec...
This paper presents an investigation into exploiting the population-based nature of learning classif...
This paper presents an investigation into exploiting the population-based nature of learning classif...
In this paper we propose a meta-evolutionary approach to improve on the performance of individual cl...
Building ensembles of classifiers is an active area of research for machine learning, with the funda...
Evolutionary Algorithms (EAs) are population based algorithms that can tackle complex optimization p...
Abstract. Ensemble algorithms can improve the performance of a given learning algorithm through the ...
Self-adaption capacity is an important element in Evolutionary Algorithms. Self-adaption properties ...
Ensemble algorithms can improve the performance of a given learning algorithm through the combinatio...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
Ensemble methods have shown the poten-tial to improve on the performance of indi-vidual classiers as...
Real-world optimisation often involves uncertainty. Previous studies proved that evolutionary algori...
This paper presents a novel ensemble learning method based on evolutionary algorithms to cope with d...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
This paper presents an investigation into exploiting the population-based nature of learning classif...
Automated Machine Learning (Auto-ML) is an emerging area of ML which consists of automatically selec...
This paper presents an investigation into exploiting the population-based nature of learning classif...
This paper presents an investigation into exploiting the population-based nature of learning classif...