Maximum Likelihood Topology Preserving Ensembles.

Corchado, E., Baruque, B. and Gabrys, B., 2006. Maximum Likelihood Topology Preserving Ensembles. In: Corchado, E., Yin, H., Botti, V. and Fyfe, C., eds. Intelligent Data Engineering Andautomated Learning - Ideal 2006: 7th International Conference, Burgos, Spain, September 20-23, 2006. Springer Berlin / Heidelberg, pp. 1434-1442.

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Official URL: http://www.springerlink.com/content/y4w77863443261...

DOI: 10.1007/11875581_170

Abstract

Statistical re-sampling techniques have been used extensively and successfully in the machine learning approaches for generations of classifier and predictor ensembles. It has been frequently shown that combining so called unstable predictors has a stabilizing effect on and improves the performance of the prediction system generated in this way. In this paper we use the re-sampling techniques in the context of a topology preserving map which can be used for scale invariant classification, taking into account the fact that it models the residual after feedback with a family of distributions and finds filters which make the residuals most likely under this model. This model is applied to artificial data sets and compared with a similar version based on the Self Organising Map (SOM).

Item Type:Book Section
ISBN:3540454853
Series Name:Lecture Notes in Computer Science
Number of Pages:1474
Series Name:Lecture Notes in Computer Science
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:8529
Deposited By:INVALID USER
Deposited On:19 Dec 2008 19:41
Last Modified:07 Mar 2013 15:02
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