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      Laplace's Method Approximations for Probabilistic Inference in Belief Networks with Continuous Variables

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          Abstract

          Laplace's method, a family of asymptotic methods used to approximate integrals, is presented as a potential candidate for the tool box of techniques used for knowledge acquisition and probabilistic inference in belief networks with continuous variables. This technique approximates posterior moments and marginal posterior distributions with reasonable accuracy [errors are O(n^-2) for posterior means] in many interesting cases. The method also seems promising for computing approximations for Bayes factors for use in the context of model selection, model uncertainty and mixtures of pdfs. The limitations, regularity conditions and computational difficulties for the implementation of Laplace's method are comparable to those associated with the methods of maximum likelihood and posterior mode analysis.

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          Discrete Approximations of Probability Distributions

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            Moment Methods for Decision Analysis

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              Approximate marginal densities of nonlinear functions

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                Author and article information

                Journal
                2013-02-27
                Article
                1302.6782
                eacbb40f-b528-4427-b0a2-fb3276e0e041

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                UAI-P-1994-PG-28-36
                Appears in Proceedings of the Tenth Conference on Uncertainty in Artificial Intelligence (UAI1994)
                cs.AI
                auai

                Artificial intelligence
                Artificial intelligence

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