Min-BDeu and Max-BDeu Scores for Learning Bayesian Networks

Mauro Scanagatta, Cassio Polpo de Campos, Marco Zaffalon

    Research output: Chapter in Book/Report/Conference proceedingChapterAcademicpeer-review

    Abstract

    This work presents two new score functions based on the Bayesian Dirichlet equivalent uniform (BDeu) score for learning Bayesian network structures. They consider the sensitivity of BDeu to varying parameters of the Dirichlet prior. The scores take on the most adversary and the most beneficial priors among those within a contamination set around the symmetric one. We build these scores in such way that they are decomposable and can be computed efficiently. Because of that, they can be integrated into any state-of-the-art structure learning method that explores the space of directed acyclic graphs and allows decomposable scores. Empirical results suggest that our scores outperform the standard BDeu score in terms of the likelihood of unseen data and in terms of edge discovery with respect to the true network, at least when the training sample size is small. We discuss the relation between these new scores and the accuracy of inferred models. Moreover, our new criteria can be used to identify the amount of data after which learning is saturated, that is, additional data are of little help to improve the resulting model.
    Original languageEnglish
    Title of host publicationProbabilistic Graphical Models: 7th European Workshop, PGM 2014, Utrecht, The Netherlands, September 17-19, 2014. Proceedings
    PublisherSpringer
    Pages426-441
    Number of pages16
    VolumeLNAI 8754
    ISBN (Print)9783319114323
    Publication statusPublished - 2015

    Publication series

    NameLecture Note in Artificial Intelligency

    Bibliographical note

    (blind peer reviewed by >3 reviewers)

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