Performance Envelopes of Adaptive Ensemble Data Stream Classifiers

  • Stefan Joe-Yen

    Student thesis: Doctoral ThesisDoctor of Philosophy

    Abstract

    This dissertation documents a study of the performance characteristics of algorithms designed to mitigate the effects of concept drift on online machine learning. Several supervised binary classifiers were evaluated on their performance when applied to an input data stream with a non-stationary class distribution. The selected classifiers included ensembles that combine the contributions of their member algorithms to improve overall performance. These ensembles adapt to changing class definitions, known as “concept drift,” often present in real-world situations, by adjusting the relative contributions of their members. Three stream classification algorithms and three adaptive ensemble algorithms were compared to determine the capabilities of each in terms of accuracy and throughput. For each
    Date of AwardJan 1 2017
    Original languageEnglish
    SupervisorSumitra Mukherjee (Supervisor), Michael J Laszlo (Advisor) & Frank J. Mitropoulos (Advisor)

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