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arxiv: 1302.4934 · v1 · pith:PYRBGZ7Tnew · submitted 2013-02-20 · 💻 cs.AI

Error Estimation in Approximate Bayesian Belief Network Inference

classification 💻 cs.AI
keywords instantiationserrormethodabsolutebayesianbeliefdistributioninference
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We can perform inference in Bayesian belief networks by enumerating instantiations with high probability thus approximating the marginals. In this paper, we present a method for determining the fraction of instantiations that has to be considered such that the absolute error in the marginals does not exceed a predefined value. The method is based on extreme value theory. Essentially, the proposed method uses the reversed generalized Pareto distribution to model probabilities of instantiations below a given threshold. Based on this distribution, an estimate of the maximal absolute error if instantiations with probability smaller than u are disregarded can be made.

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