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ICANN
2007
Springer

Structure Learning with Nonparametric Decomposable Models

13 years 10 months ago
Structure Learning with Nonparametric Decomposable Models
Abstract. We present a novel approach to structure learning for graphical models. By using nonparametric estimates to model clique densities in decomposable models, both discrete and continuous distributions can be handled in a unified framework. Also, consistency of the underlying probabilistic model is guaranteed. Model selection is based on predictive assessment, with efficient algorithms that allow fast greedy forward and backward selection within the class of decomposable models. We show the validity of this structure learning approach on toy data, and on two large sets of gene expression data. Preprint, full paper appears in: J. Marques de S´a et al. (Eds.), ICANN 2007, Lecture Notes in Computer Science 4668, pages 119-128. Springer Verlag, 2007. (C) Springer Verlag
Anton Schwaighofer, Mathäus Dejori, Volker Tr
Added 08 Jun 2010
Updated 08 Jun 2010
Type Conference
Year 2007
Where ICANN
Authors Anton Schwaighofer, Mathäus Dejori, Volker Tresp, Martin Stetter
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