4.7 Article

Efficient parameter learning of Bayesian network classifiers

Journal

MACHINE LEARNING
Volume 106, Issue 9-10, Pages 1289-1329

Publisher

SPRINGER
DOI: 10.1007/s10994-016-5619-z

Keywords

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Funding

  1. Australian Research Council (ARC) [DP140100087]
  2. Air Force Office of Scientific Research, Asian Office of Aerospace Research and Development (AOARD) [FA2386-15-1-4007, FA2386-16-1-4023]

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Recent advances have demonstrated substantial benefits from learning with both generative and discriminative parameters. On the one hand, generative approaches address the estimation of the parameters of the joint distribution-, which for most network types is very computationally efficient (a notable exception to this are Markov networks) and on the other hand, discriminative approaches address the estimation of the parameters of the posterior distribution-and, are more effective for classification, since they fit directly. However, discriminative approaches are less computationally efficient as the normalization factor in the conditional log-likelihood precludes the derivation of closed-form estimation of parameters. This paper introduces a new discriminative parameter learning method for Bayesian network classifiers that combines in an elegant fashion parameters learned using both generative and discriminative methods. The proposed method is discriminative in nature, but uses estimates of generative probabilities to speed-up the optimization process. A second contribution is to propose a simple framework to characterize the parameter learning task for Bayesian network classifiers. We conduct an extensive set of experiments on 72 standard datasets and demonstrate that our proposed discriminative parameterization provides an efficient alternative to other state-of-the-art parameterizations.

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