Ensemble margin Classification confidence a b s t r a c t Ensemble learning has attracted considerable attention owing to its good generalization performance. The main issues in constructing a powerful ensemble include training a set of diverse and accurate base classifiers, and effectively combining them. Ensemble margin, computed as the difference of the vote numbers received by the correct class and the another class received with the most votes, is widely used to explain the success of ensemble learning. This definition of the ensemble margin does not consider the classification confidence of base classifiers. In this work, we explore the influence of the classification confidence of the base classifiers in ensemble learning and obtain ...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
The proportion of instances belonging to each class in a data-set plays an important role in machine...
Ensemble learning combines a series of base classifiers and the final result is assigned to the corr...
Ensemble methods, such as bagging (Breiman, 1996), boosting (Freund and Schapire, 1997) and random f...
In real world situations every model has some weaknesses and will make errors on training data. Give...
Part 7: DecisionsInternational audienceIn the classification task, the ensemble of classifiers have ...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
The main aim in ensemble learning is using multiple classifiers rather than one classifier to aggreg...
Classification is one of the critical task in datamining. Many classifiers exist for classification ...
Classification is one of the critical task in datamining. Many classifiers exist for classification ...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
The proportion of instances belonging to each class in a data-set plays an important role in machine...
Ensemble learning combines a series of base classifiers and the final result is assigned to the corr...
Ensemble methods, such as bagging (Breiman, 1996), boosting (Freund and Schapire, 1997) and random f...
In real world situations every model has some weaknesses and will make errors on training data. Give...
Part 7: DecisionsInternational audienceIn the classification task, the ensemble of classifiers have ...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
The main aim in ensemble learning is using multiple classifiers rather than one classifier to aggreg...
Classification is one of the critical task in datamining. Many classifiers exist for classification ...
Classification is one of the critical task in datamining. Many classifiers exist for classification ...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Margin distribution is acknowledged as an important factor for improving the generalization performa...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...