In the last decades ensemble learning has established itself as a valuable strategy within the computational intelligence modeling and machine learning community. Ensemble learning is a paradigm where multiple models combine in some way their decisions, or their learning algorithms, or different data to improve the prediction performance. Ensemble learning aims at improving the generalization ability and the reliability of the system. Key factors of ensemble systems are diversity, training and combining ensemble members to improve the ensemble system performance. Since there is no unified procedure to address all these issues, this work proposes and compares Genetic Algorithm and Simulated Annealing based approaches for the automatic develo...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
The main contribution of this paper is to suggest a novel technique for automatic creation of accura...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
Ensemble Methods (EMs) are sets of models that combine their decisions, or their learning algorithms...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
This thesis is focused on the analysis and development of Ensembles of Neural Networks. An ensemble ...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
The main contribution of this paper is to suggest a novel technique for automatic creation of accura...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
Ensemble Methods (EMs) are sets of models that combine their decisions, or their learning algorithms...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
Both theory and a wealth of empirical studies have established that ensembles are more accurate than...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
This thesis is focused on the analysis and development of Ensembles of Neural Networks. An ensemble ...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
The main contribution of this paper is to suggest a novel technique for automatic creation of accura...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...