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Classifier Fusion Using Shared Sampling Distribution for Boosting
Houston, Texas November 27-November 30
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICDM.2005.40Fifth IEEE International Conference o ...
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Costin Barbu, Tulane University
Raja Iqbal, Tulane University
Jing Peng, Tulane University
We present a new framework for classifier fusion that uses a shared sampling distribution for obtaining a weighted classifier ensemble. The weight update process is self regularizing as subsequent classifiers trained on the disjoint views rectify the bias introduced by any classifier in preceding iterations. We provide theoretical guarantees that our approach indeed provides results which are better than the case when boosting is performed separately on different views. The results are shown to outperform other classifier fusion strategies on a well known texture image database.
Citation:
Costin Barbu, Raja Iqbal, Jing Peng, "Classifier Fusion Using Shared Sampling Distribution for Boosting," icdm, pp.34-41, Fifth IEEE International Conference on Data Mining (ICDM'05), 2005
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