Uncertainty in Artificial Intelligence
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Tractable Bayesian Learning of Tree Belief Networks
Marina Meila, Tommi Jaakkola
Abstract:
In this paper we present decomposable priors, a family of priors over structure and parameters of tree belief nets for which Bayesian learning with complete observations is tractable, in the sense that the posterior is also decomposable and can be completely determined analytically in polynomial time. This follows from two main results: First, we show that factored distributions over spanning trees in a graph can be integrated in closed form. Second, we examine priors over tree parameters and show that a set of assumptions similar to (Heckerman and al. 1995) constrain the tree parameter priors to be a compactly parameterized product of Dirichlet distributions. Beside allowing for exact Bayesian learning, these results permit us to formulate a new class of tractable latent variable models in which the likelihood of a data point is computed through an ensemble average over tree structures.
Keywords:
Pages: 380-388
PS Link:
PDF Link: /papers/00/p380-meila.pdf
BibTex:
@INPROCEEDINGS{Meila00,
AUTHOR = "Marina Meila and Tommi Jaakkola",
TITLE = "Tractable Bayesian Learning of Tree Belief Networks",
BOOKTITLE = "Proceedings of the Sixteenth Conference Annual Conference on Uncertainty in Artificial Intelligence (UAI-00)",
PUBLISHER = "Morgan Kaufmann",
ADDRESS = "San Francisco, CA",
YEAR = "2000",
PAGES = "380--388"
}


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