Online adaptive policies for ensemble classifiers
Author(s)
Samy Bengio
Date issued
2005
In
Neurocomputing
Vol
64
From page
211
To page
221
Subjects
Neural networks Supervised learning Reinforcement learning Ensembles Mixture of experts Boosting Q-learning
Abstract
Ensemble algorithms can improve the performance of a given learning algorithm through the combination of multiple base classifiers into an ensemble. In this paper, we attempt to train and combine the base classifiers using an adaptive policy. This policy is learnt through a Q-learning inspired technique. Its effectiveness for an essentially supervised task is demonstrated by experimental results on several UCI benchmark databases.
Publication type
journal article
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