资源论文A General MCMC Method for Bayesian Inference in Logic-Based Probabilistic Modeling

A General MCMC Method for Bayesian Inference in Logic-Based Probabilistic Modeling

2019-11-12 | |  58 |   39 |   0
Abstract We propose a general MCMC method for Bayesian inference in logic-based probabilistic modeling. It covers a broad class of generative models including Bayesian networks and PCFGs. The idea is to generalize an MCMC method for PCFGs to the one for a Turing-complete probabilistic modeling language PRISM in the context of statistical abduction where parse trees are replaced with explanations. We describe how to estimate the marginal probability of data from MCMC samples and how to perform Bayesian Viterbi inference using an example of Naive Bayes model augmented with a hidden variable.

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