Computer Science – Learning
Scientific paper
2011-12-22
Computer Science
Learning
Related to both Ensemble learning and one-class learning. Length of 6 pages. This document is the smaller version of a journal
Scientific paper
We examine various methods for combining the output of one-class models. In particular, we show that simple meta-learning based ensemble achieves better result than weighting methods. Furthermore we propose a new one-class ensemble scheme, called TUPSO that uses meta-learning for combining multiple one-class classifiers. We also present a new one-class classification performance measures to weigh the base-classifiers, a process that proved helpful for increasing the classification performance of the induced ensemble. Our experimental study shows that the proposed method significantly outperforms exiting methods.
Elovici Yuval
Lior Rokach Eitan Menahem
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