Three data partitioning strategies for building local classifiers

I. Zliobaite

    Research output: Chapter in Book/Report/Conference proceedingChapterAcademic

    Abstract

    Divide-and-conquer approach has been recognized in multiple classifier systems aiming to utilize local expertise of individual classifiers. In this study we experimentally investigate three strategies for building local classifiers that are based on different routines of sampling data for training. The first two strategies are based on clustering the training data and building an individual classifier for each cluster or a combination. The third strategy divides the training set based on a selected feature and trains a separate classifier for each subset. Experiments are carried out on simulated and real datasets. We report improvement in the final classification accuracy as a result of combining the three strategies.
    Original languageEnglish
    Title of host publicationEnsembles in Machine Learning Applications
    EditorsO. Okun, G. Valentini, M. Re
    Chapter14
    Pages233-250
    DOIs
    Publication statusPublished - 2011

    Publication series

    NameStudies in Computational Intelligence
    Volume373
    ISSN (Print)1860-949X

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