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Practical perfect sampling using composite bounding chains: The Dirichlet-multinomial model

机译:使用复合边界链的实用完美采样:Dirichlet多项式模型

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摘要

A discrete data augmentation scheme together with two different parameterizations yields two Gibbs samplers for sampling from the posterior distribution of the hyperparameters of the Dirichlet-multinomial hierarchical model under a default prior distribution. The finite-state space nature of this data augmentation permits us to construct two perfect samplers using bounding chains that take advantage of monotonicity and anti-monotonicity in the target posterior distribution, but both are impractically slow. We demonstrate that a composite algorithm that strategically alternates between the two samplers' updates can be substantially faster than either individually. The speed gains come because the composite algorithm takes a divide-and-conquer approach in which one update quickly shrinks the bounding set for the augmented data, and the other update immediately coalesces on the parameter, once the augmented-data bounding set is a singleton. We theoretically bound the expected time until coalescence for the composite algorithm, and show via simulation that the theoretical bounds can be close to actual performance.
机译:离散数据增强方案与两个不同的参数化一起产生了两个吉布斯采样器,用于在默认的先验分布下从Dirichlet多项式层次模型的超参数的后验分布进行采样。这种数据扩充的有限状态空间性质使我们能够使用边界链构造两个完美的采样器,这些边界链利用了目标后验分布中的单调性和反单调性,但是两者都在实践上缓慢。我们证明,策略性地在两个采样器的更新之间交替的复合算法比单个算法要快得多。之所以能够提高速度,是因为复合算法采用了分而治之的方法,其中一种更新快速缩小了扩充数据的边界集,而另一种更新则在扩充数据边界集成为单例后立即合并到该参数上。 。我们在理论上限制了复合算法合并之前的预期时间,并通过仿真表明理论范围可以接近实际性能。

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