Combining One-Class Classifiers via Meta-Learning

Computer Science – Learning

Scientific paper

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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.

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