Ensemble methods show improved generalization capabilities that outperforrn those of single larners. lt is generally accepted that, for aggregation to be effective, the individual learners must be as accurate and diverse as possible. An important problem in ensemble learning is then how to find a good balance between these two conflicting conditions. For tree-based methods a successfill strategy was introduced by Breiman with the Random-Forest algorithm. In this work we introduce new methods for neural network ensemble construction that follow Random-Forest-like strategies to construct ensembles. Using several real and artificial regression problems, we compare onr new methods with the more typical Bagging algorithrm and with three state-of...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
In this paper a novel hybrid ensemble method aiming at the improvement of models accuracy in regress...
A random forest is a popular machine learning ensemble method that has proven successful in solving ...
Ensemble methods show improved generalization capabilities that outperforrn those of single larners....
Given an ensemble of randomized regression trees, it is possible to restructure them as a collection...
Recent expansions of technology led to growth and availability of different types of data. This, thu...
A random forest is a popular machine learning ensemble method that has proven successful in solving ...
AbstractEnsembles of artificial neural networks show improved generalization capabilities that outpe...
Discuss approaches to combine techniques used by ensemble learning methods. Randomness which is used...
Scherbart A, Nattkemper TW. The Diversity of Regression Ensembles Combining Bagging and Random Subsp...
We propose a new method for training an ensemble of neural networks. A population of networks is cre...
In this paper, we introduce and evaluate a novelmethod, called random brains, for producing neural n...
Publisher Copyright: © 2021, The Author(s).Heterogeneous ensembles consist of predictors of differen...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
An ensemble consists of a set of individually trained classifiers (such as neural networks or decisi...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
In this paper a novel hybrid ensemble method aiming at the improvement of models accuracy in regress...
A random forest is a popular machine learning ensemble method that has proven successful in solving ...
Ensemble methods show improved generalization capabilities that outperforrn those of single larners....
Given an ensemble of randomized regression trees, it is possible to restructure them as a collection...
Recent expansions of technology led to growth and availability of different types of data. This, thu...
A random forest is a popular machine learning ensemble method that has proven successful in solving ...
AbstractEnsembles of artificial neural networks show improved generalization capabilities that outpe...
Discuss approaches to combine techniques used by ensemble learning methods. Randomness which is used...
Scherbart A, Nattkemper TW. The Diversity of Regression Ensembles Combining Bagging and Random Subsp...
We propose a new method for training an ensemble of neural networks. A population of networks is cre...
In this paper, we introduce and evaluate a novelmethod, called random brains, for producing neural n...
Publisher Copyright: © 2021, The Author(s).Heterogeneous ensembles consist of predictors of differen...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
An ensemble consists of a set of individually trained classifiers (such as neural networks or decisi...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
In this paper a novel hybrid ensemble method aiming at the improvement of models accuracy in regress...
A random forest is a popular machine learning ensemble method that has proven successful in solving ...