TL;DR
The paper introduces AIS-BN, an adaptive importance sampling algorithm that significantly improves the efficiency and accuracy of probabilistic inference in large Bayesian networks, especially under extremely unlikely evidence conditions.
Contribution
The paper presents a novel adaptive importance sampling algorithm, AIS-BN, with heuristics and dynamic weighting that outperform existing methods in large Bayesian networks.
Findings
AIS-BN outperforms likelihood weighting and self-importance sampling.
Orders of magnitude improvement in precision over existing algorithms.
Dramatic speed improvements for achieving desired accuracy.
Abstract
Stochastic sampling algorithms, while an attractive alternative to exact algorithms in very large Bayesian network models, have been observed to perform poorly in evidential reasoning with extremely unlikely evidence. To address this problem, we propose an adaptive importance sampling algorithm, AIS-BN, that shows promising convergence rates even under extreme conditions and seems to outperform the existing sampling algorithms consistently. Three sources of this performance improvement are (1) two heuristics for initialization of the importance function that are based on the theoretical properties of importance sampling in finite-dimensional integrals and the structural advantages of Bayesian networks, (2) a smooth learning method for the importance function, and (3) a dynamic weighting function for combining samples from different stages of the algorithm. We tested the performance of…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
