Application of the Evolutionary Algorithms for Classifier Selection in Multiple Classifier Systems with Majority Voting.

Ruta, D. and Gabrys, B., 2001. Application of the Evolutionary Algorithms for Classifier Selection in Multiple Classifier Systems with Majority Voting. In: Kittler, J. and Roli, F., eds. Multiple Classifier Systems: Second International Workshop, MCS 2001, Cambridge, UK, July 2-4, 2001. London: Springer Berlin / Heidelberg, pp. 399-408.

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Official URL: http://www.springerlink.com/content/vwaycadawr2fcj...

DOI: 10.1007/3-540-48219-9_40

Abstract

In many pattern recognition tasks, an approach based on combining classifiers has shown a significant potential gain in comparison to the performance of an individual best classifier. This improvement turned out to be subject to a sufficient level of diversity exhibited among classifiers, which in general can be assumed as a selective property of classifier subsets. Given a large number of classifiers, an intelligent classifier selection process becomes a crucial issue of multiple classifier system design. In this paper, we have investigated three evolutionary optimization methods for the classifier selection task. Based on our previous studies of various diversity measures and their correlation with majority voting error we have adopted majority voting performance computed for the validation set directly as a fitness function guiding the search. To prevent from training data overfitting we extracted a population of best unique classifier combinations, and used them for second stage majority voting. In this work we intend to show empirically, that using efficient evolutionary-based selection leads to the results comparable to absolutely best, found exhaustively. Moreover, as we showed for selected datasets, introducing a second stage combining by majority voting has the potential for both, further improvement of the recognition rate and increase of the reliability of combined outputs.

Item Type:Book Section
ISBN:978-3-540-42284-6
Series Name:Lecture Notes in Computer Science / Lecture Notes in Artificial Intelligence
Number of Pages:456
Series Name:Lecture Notes in Computer Science / Lecture Notes in Artificial Intelligence
Subjects:Generalities > Computer Science and Informatics > Artificial Intelligence
Generalities > Computer Science and Informatics
Group:School of Design, Engineering & Computing > Smart Technology Research Centre
ID Code:8543
Deposited By:INVALID USER
Deposited On:20 Dec 2008 17:42
Last Modified:07 Mar 2013 15:02
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