Title of article
SampleSearch: Importance sampling in presence of determinism Original Research Article
Author/Authors
Vibhav Gogate، نويسنده , , Rina Dechter، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
36
From page
694
To page
729
Abstract
The paper focuses on developing effective importance sampling algorithms for mixed probabilistic and deterministic graphical models. The use of importance sampling in such graphical models is problematic because it generates many useless zero weight samples which are rejected yielding an inefficient sampling process. To address this rejection problem, we propose the SampleSearch scheme that augments sampling with systematic constraint-based backtracking search. We characterize the bias introduced by the combination of search with sampling, and derive a weighting scheme which yields an unbiased estimate of the desired statistics (e.g., probability of evidence). When computing the weights exactly is too complex, we propose an approximation which has a weaker guarantee of asymptotic unbiasedness. We present results of an extensive empirical evaluation demonstrating that SampleSearch outperforms other schemes in presence of significant amount of determinism.
Keywords
Markov chain Monte Carlo , Approximate inference , Importance sampling , Bayesian networks , Model counting , Satisfiability , Markov Networks , Constraint satisfaction , Probabilistic inference
Journal title
Artificial Intelligence
Serial Year
2011
Journal title
Artificial Intelligence
Record number
1207821
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