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Kikuchi-Bayes: Factorized Models for Approximate Classification in Closed Form

Aleks Jakulin and Irina Rish and Ivan Bratko (2004) Kikuchi-Bayes: Factorized Models for Approximate Classification in Closed Form.

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    Abstract

    We propose a simple family of classification models, based on the Kikuchi approximation to free energy. We note that the resulting product of potentials is not normalized, but for classification it is easy to perform the normalization for each instance separately. We propose a learning method based on including those initial regions that would otherwise be significantly different from those estimated directly. We observe that this algorithm outperforms other methods, such as the tree-augmented naive Bayes, but that the inclusion of regions may increase the approximation error, even in cases when adding a region does not yield loopy dependencies.

    Item Type: Article
    Keywords: naive Bayesian classifier, cluster variation method, Kikuchi approximation, bootstrap
    Language of Content: English
    Related URLs:
    URLURL Type
    http://domino.watson.ibm.com/library/cyberdig.nsf/1e4115aea78b6e7c85256b360066f0d4/1d7d35813a0cbdc185256f02006afa9f?OpenDocumentAlternative location
    Institution: University of Ljubljana
    Department: Faculty of Computer and Information Science
    Divisions: Faculty of Computer and Information Science > Artificial Intelligence Laboratory
    Item ID: 149
    Date Deposited: 27 Oct 2004
    Last Modified: 13 Aug 2011 00:32
    URI: http://eprints.fri.uni-lj.si/id/eprint/149

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