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arxiv: 1212.2507 · v1 · pith:7R2QRWLHnew · submitted 2012-10-19 · 💻 cs.AI

An Importance Sampling Algorithm Based on Evidence Pre-propagation

classification 💻 cs.AI
keywords algorithmimportancesamplingevidencenetworksais-bnbayesiane-cutoff
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Precision achieved by stochastic sampling algorithms for Bayesian networks typically deteriorates in face of extremely unlikely evidence. To address this problem, we propose the Evidence Pre-propagation Importance Sampling algorithm (EPIS-BN), an importance sampling algorithm that computes an approximate importance function by the heuristic methods: loopy belief Propagation and e-cutoff. We tested the performance of e-cutoff on three large real Bayesian networks: ANDES, CPCS, and PATHFINDER. We observed that on each of these networks the EPIS-BN algorithm gives us a considerable improvement over the current state of the art algorithm, the AIS-BN algorithm. In addition, it avoids the costly learning stage of the AIS-BN algorithm.

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