Abstract : The objective is to provide methods to improve the performance, or prediction accuracy of standard stacking approach, which is an ensemble method composed of simple, heterogeneous base models, through the integration of the diversity generation, combination and/or selection stages for regression problems. In Chapter 1, we propose to combine a set of level-1 learners into a level-2 learner, or ensemble. We also propose to inject a diversity generation mechanism into the initial cross-validation partition, from which new cross-validation partitions are generated, and sub-sequent ensembles are trained. Then, we propose an algorithm to select best partition, or corresponding ensemble. In Chapter 2, we formulate the partition selectio...
The diversity of an ensemble of classifiers is known to be an important factor in determining its ge...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
In this paper, a new method is proposed for creating an optimized ensemble classifier. The proposed ...
The motivation of this work is to improve the performance of standard stacking approaches or ensembl...
Les méthodes ensemblistes constituent un sujet de recherche très populaire au cours de la dernière d...
Apprendre des tâches simultanément peut améliorer la performance de prédiction par rapport à l'appre...
Over the last two decades, the machine learning and related communities have conducted numerous stud...
In this paper, we propose a method to generate an optimized ensemble classifier. In the proposed met...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Ensemble methods has been a very popular research topic during the last decade. Their success arises...
This paper presents an algorithm to generate ensemble classifier by joint optimization of accuracy a...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
Discussions about the influence of diversity when designing Multiple Classifier Systems has been an ...
A popular technique for modelling data is to construct an ensemble of learners and combine them in t...
AbstractEnsemble learning is a learning method where a collection of a finite number of classifiers ...
The diversity of an ensemble of classifiers is known to be an important factor in determining its ge...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
In this paper, a new method is proposed for creating an optimized ensemble classifier. The proposed ...
The motivation of this work is to improve the performance of standard stacking approaches or ensembl...
Les méthodes ensemblistes constituent un sujet de recherche très populaire au cours de la dernière d...
Apprendre des tâches simultanément peut améliorer la performance de prédiction par rapport à l'appre...
Over the last two decades, the machine learning and related communities have conducted numerous stud...
In this paper, we propose a method to generate an optimized ensemble classifier. In the proposed met...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Ensemble methods has been a very popular research topic during the last decade. Their success arises...
This paper presents an algorithm to generate ensemble classifier by joint optimization of accuracy a...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
Discussions about the influence of diversity when designing Multiple Classifier Systems has been an ...
A popular technique for modelling data is to construct an ensemble of learners and combine them in t...
AbstractEnsemble learning is a learning method where a collection of a finite number of classifiers ...
The diversity of an ensemble of classifiers is known to be an important factor in determining its ge...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
In this paper, a new method is proposed for creating an optimized ensemble classifier. The proposed ...