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Retrospective Markov chain Monte Carlo methods for Dirichlet process hierarchical models

机译:Dirichlet过程分层模型的追溯马尔可夫链蒙特卡罗方法

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摘要

Inference for Dirichlet process hierarchical models is typically performed using Markov chain Monte Carlo methods, which can be roughly categorized into marginal and conditional methods. The former integrate out analytically the infinite-dimensional component of the hierarchical model and sample from the marginal distribution of the remaining variables using the Gibbs sampler. Conditional methods impute the Dirichlet process and update it as a component of the Gibbs sampler. Since this requires imputation of an infinite-dimensional process, implementation of the conditional method has relied on finite approximations. In this paper, we show how to avoid such approximations by designing two novel Markov chain Monte Carlo algorithms which sample from the exact posterior distribution of quantities of interest. The approximations are avoided by the new technique of retrospective sampling. We also show how the algorithms can obtain samples from functionals of the Dirichlet process. The marginal and the conditional methods are compared and a careful simulation study is included, which involves a non-conjugate model, different datasets and prior specifications.
机译:Dirichlet过程层次模型的推论通常使用马尔可夫链蒙特卡洛方法进行,可以将其大致分为边际方法和条件方法。前者从分析上整合了层次模型的无穷维组成部分,并使用Gi​​bbs采样器从剩余变量的边际分布中采样。条件方法会插补Dirichlet流程并将其更新为Gibbs采样器的组件。由于这需要进行无限维过程的估算,因此条件方法的实现依赖于有限近似。在本文中,我们展示了如何通过设计两个新颖的马尔可夫链蒙特卡洛算法来避免这种近似,该算法从目标数量的精确后验分布中采样。追溯采样的新技术避免了这种近似。我们还将展示算法如何从Dirichlet过程的功能中获取样本。比较了边际方法和条件方法,并进行了仔细的仿真研究,其中涉及非共轭模型,不同的数据集和先​​前的规范。

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