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Complexity of Inference in Graphical Models

Conference on Uncertainty in Artificial Intelligence (UAI), 2008
13 June 2012
V. Chandrasekaran
Nathan Srebro
P. Harsha
    TPM
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Abstract

It is well-known that inference in graphical models is hard in the worst case, but tractable for models with bounded treewidth. We ask whether treewidth is the only structural criterion of the underlying graph that enables tractable inference. In other words, is there some class of structures with unbounded treewidth in which inference is tractable? Subject to a combinatorial hypothesis due to Robertson et al. (1994), we show that low treewidth is indeed the only structural restriction that can ensure tractability. Thus, even for the "best case" graph structure, there is no inference algorithm with complexity polynomial in the treewidth.

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