4.7 Article

To select or to weigh: A comparative study of linear combination schemes for superparent-one-dependence estimators

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 19, Issue 12, Pages 1652-1665

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2007.190650

Keywords

classification learning; Bayesian probabilistic learning; ensemble learning; model selection; model weighing; superparent-one-dependence estimator (SPODE)

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We conduct a large-scale comparative study on linearly combining superparent-one-dependence estimators (SPODEs), a popular family of seminaive Bayesian classifiers. Altogether, 16 model selection and weighing schemes, 58 benchmark data sets, and various statistical tests are employed. This paper's main contributions are threefold. First, it formally presents each scheme's definition, rationale, and time complexity and hence can serve as a comprehensive reference for researchers interested in ensemble learning. Second, it offers bias-variance analysis for each scheme's classification error performance. Third, it identifies effective schemes that meet various needs in practice. This leads to accurate and fast classification algorithms which have an immediate and significant impact on real-world applications. Another important feature of our study is using a variety of statistical tests to evaluate multiple learning methods across multiple data sets.

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