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arxiv: 1206.5251 · v1 · pith:Y3KA3Y53new · submitted 2012-06-20 · 💻 cs.AI

Node Splitting: A Scheme for Generating Upper Bounds in Bayesian Networks

classification 💻 cs.AI
keywords formulationinferenceallowsapproximateapproximationsbayesianboundsexact
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We formulate in this paper the mini-bucket algorithm for approximate inference in terms of exact inference on an approximate model produced by splitting nodes in a Bayesian network. The new formulation leads to a number of theoretical and practical implications. First, we show that branchand- bound search algorithms that use minibucket bounds may operate in a drastically reduced search space. Second, we show that the proposed formulation inspires new minibucket heuristics and allows us to analyze existing heuristics from a new perspective. Finally, we show that this new formulation allows mini-bucket approximations to benefit from recent advances in exact inference, allowing one to significantly increase the reach of these approximations.

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