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arxiv: 1206.3232 · v1 · pith:HBS5STR6new · submitted 2012-06-13 · 💻 cs.AI

AND/OR Importance Sampling

classification 💻 cs.AI
keywords importancesamplingsamplesaccuratecachescasescontrastdemonstrates
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The paper introduces AND/OR importance sampling for probabilistic graphical models. In contrast to importance sampling, AND/OR importance sampling caches samples in the AND/OR space and then extracts a new sample mean from the stored samples. We prove that AND/OR importance sampling may have lower variance than importance sampling; thereby providing a theoretical justification for preferring it over importance sampling. Our empirical evaluation demonstrates that AND/OR importance sampling is far more accurate than importance sampling in many cases.

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