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Annealed Importance Sampling Reversible Jump MCMC Algorithms

机译:退火重要性采样可逆跳转MCMC算法

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摘要

We develop a methodology to efficiently implement the reversible jump Markov chain Monte Carlo (RJ-MCMC) algorithms of Green, applicable for example to model selection inference in a Bayesian framework, which builds on the “dragging fast variables” ideas of Neal. We call such algorithms annealed importance sampling reversible jump (aisRJ). The proposed procedures can be thought of as being exact approximations of idealized RJ algorithms which in a model selection problem would sample the model labels only, but cannot be implemented. Central to the methodology is the idea of bridging different models with fictitious intermediate models, whose role is to introduce smooth intermodel transitions and, as we shall see, improve performance. Efficiency of the resulting algorithms is demonstrated on two standard model selection problems and we show that despite the additional computational effort incurred, the approach can be highly competitive computationally. Supplementary materials for the article are available online.
机译:我们开发了一种方法,可以有效地实现Green的可逆跳跃马尔可夫链蒙特卡罗(RJ-MCMC)算法,例如,该算法适用于基于Neal的“拖延快速变量”思想的贝叶斯框架中的模型选择推理。我们称此类算法为退火重要性抽样可逆跳(aisRJ)。所提出的过程可以被认为是理想化RJ算法的精确近似,它在模型选择问题中仅对模型标签进行采样,但无法实施。方法学的中心思想是将不同的模型与虚拟的中间模型联系起来,其作用是引入平滑的模型间过渡,并提高性能。在两个标准模型选择问题上证明了所得算法的效率,并且我们证明了尽管产生了额外的计算量,但该方法在计算上仍具有很高的竞争力。该文章的补充材料可在线获得。

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