The motivation of this work is to improve the performance of standard stacking approaches or ensembles, which are composed of simple, heterogeneous base models, through the integration of the generation and selection stages for regression prob-lems. We propose two extensions to the standard stacking approach. In the first extension we combine a set of standard stacking approaches into an ensemble of ensembles using a two-step ensemble learning in the regression setting. The second extension consists of two parts. In the initial part a diversity mechanism is injected into the original training data set, systematically generating different training sub-sets or partitions, and corresponding ensembles of ensembles. In the final part after measu...
Abstract—Ensemble learning strategies, especially Boosting and Bagging decision trees, have demonstr...
In recent decades, the development of ensemble learning methodologies has gained a significant atten...
Abstract. Classication and regression ensembles sho w generalization capabilities that outperform th...
Abstract : The objective is to provide methods to improve the performance, or prediction accuracy of...
Methods for learning decision rules are being successfully applied to many problem domains, especial...
The use of ensemble models in many problem domains has increased significantly in the last fewyears....
Abstract. The use of ensemble models in many problem domains has increased significantly in the last...
Abstract. The problem of combining predictors to increase accuracy (often called ensemble learning) ...
Abstract—Methods for learning decision rules are being successfully applied to many problem domains,...
In this paper we describe new experiments with the ensemble learning method Stacking. The cen-tral q...
Methods for learning decision rules are being successfully applied to many problem domains, in parti...
Bagging ensemble selection (BES) is a relatively new ensemble learning strategy. The strategy can be...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
Ensemble learning has been shown to significantly improve predictive accuracy in a variety of machin...
To develop a new ensemble learning method and construct highly predictive regression models in chemo...
Abstract—Ensemble learning strategies, especially Boosting and Bagging decision trees, have demonstr...
In recent decades, the development of ensemble learning methodologies has gained a significant atten...
Abstract. Classication and regression ensembles sho w generalization capabilities that outperform th...
Abstract : The objective is to provide methods to improve the performance, or prediction accuracy of...
Methods for learning decision rules are being successfully applied to many problem domains, especial...
The use of ensemble models in many problem domains has increased significantly in the last fewyears....
Abstract. The use of ensemble models in many problem domains has increased significantly in the last...
Abstract. The problem of combining predictors to increase accuracy (often called ensemble learning) ...
Abstract—Methods for learning decision rules are being successfully applied to many problem domains,...
In this paper we describe new experiments with the ensemble learning method Stacking. The cen-tral q...
Methods for learning decision rules are being successfully applied to many problem domains, in parti...
Bagging ensemble selection (BES) is a relatively new ensemble learning strategy. The strategy can be...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
Ensemble learning has been shown to significantly improve predictive accuracy in a variety of machin...
To develop a new ensemble learning method and construct highly predictive regression models in chemo...
Abstract—Ensemble learning strategies, especially Boosting and Bagging decision trees, have demonstr...
In recent decades, the development of ensemble learning methodologies has gained a significant atten...
Abstract. Classication and regression ensembles sho w generalization capabilities that outperform th...