Online Policy Adaptation for Ensemble Classifiers
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.
- URL: http://publications.idiap.ch/downloads/papers/2005/dimitrakakis-neurocomputing-2005.pdf
- Related documents: http://publications.idiap.ch/index.php/publications/showcite/dimitrakakis:rr03-69
Record created on 2006-03-10, modified on 2016-08-08