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Cycle-Cutset Sampling for Bayesian Networks

机译:贝叶斯网络的循环防护采样

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The paper presents a new sampling methodology for Bayesian networks called cutset sampling that samples only a subset of the variables and applies exact inference for the others. We show that this approach can be implemented efficiently when the sampled variables constitute a cycle-cutset for the Bayesian network and otherwise it is exponential in the induced-width of the network's graph, whose sampled variables are removed. Cutset sampling is an instance of the well known Rao-Blakwellisation technique for variance reduction investigated in [5, 2, 16]. Moreover, the proposed scheme extends standard sampling methods to non-ergodic networks with ergodic subspaces. Our empirical results confirm those expectations and show that cycle cutset sampling is superior to Gibbs sampling for a variety of benchmarks, yielding a simple, yet powerful sampling scheme.
机译:本文为贝叶斯网络提供了一种新的采样方法,称为Cutset采样,仅示机的变量的子集,并为其他网络应用精确推断。我们表明,当采样的变量构成贝叶斯网络的周期剪切时,可以有效地实现这种方法,否则它在网络图的诱导宽度中是指数的,其采样变量被移除。防粘采样是众所周知的Rao-Blakwellisation技术的实例,用于在[5,2,16]中研究的方差减少。此外,所提出的方案将标准采样方法扩展到具有ergodic子空间的非遍历网络。我们的经验结果证实了这些期望,并表明循环防护采样优于GIBBS采样,用于各种基准,产生简单但强大的采样方案。

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