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Feature Extraction for Dynamic Integration of Classifiers
Recent research has shown the integration of multiple classifiers to be one of the most important directions in machine learning and data mining. In this paper, we present an algorithm for the dynamic integration of classifiers in the space of extracted features (FEDIC). It is based on the technique...
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Published in: | Fundamenta informaticae 2007-05, Vol.77 (3), p.243-275 |
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Main Authors: | , , , |
Format: | Article |
Language: | English |
Online Access: | Get full text |
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Summary: | Recent research has shown the integration of multiple classifiers to
be one of the most important directions in machine learning and data mining. In
this paper, we present an algorithm for the dynamic integration of classifiers
in the space of extracted features (FEDIC). It is based on the technique of
dynamic integration, in which local accuracy estimates are calculated for each
base classifier of an ensemble, in the neighborhood of a new instance to be
processed. Generally, the whole space of original features is used to find the
neighborhood of a new instance for local accuracy estimates in dynamic
integration. However, when dynamic integration takes place in high dimensions
the search for the neighborhood of a new instance is problematic, since the
majority of space is empty and neighbors can in fact be located far from each
other. Furthermore, when noisy or irrelevant features are present it is likely
that also irrelevant neighbors will be associated with a test instance. In this
paper, we propose to use feature extraction in order to cope with the curse of
dimensionality in the dynamic integration of classifiers. We consider classical
principal component analysis and two eigenvector-based class-conditional
feature extraction methods that take into account class information.
Experimental results show that, on some data sets, the use of FEDIC leads to
significantly higher ensemble accuracies than the use of plain dynamic
integration in the space of original features. |
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ISSN: | 0169-2968 1875-8681 |
DOI: | 10.3233/FUN-2007-77304 |