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Fast bayesian inference in dirichlet process mixture models

机译:Dirichlet过程混合模型中的快速贝叶斯推断

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摘要

There has been increasing interest in applying Bayesian nonparametric methods in large samples and high dimensions. As Markov chain Monte Carlo (MCMC) algorithms are often infeasible, there is a pressing need for much faster algorithms. This article proposes a fast approach for inference in Dirichlet process mixture (DPM) models. Viewing the partitioning of subjects into clusters as a model selection problem, we propose a sequential greedy search algorithm for selecting the partition. Then, when conjugate priors are chosen, the resulting posterior conditionally on the selected partition is available in closed form. This approach allows testing of parametric models versus nonparametric alternatives based on Bayes factors. We evaluate the approach using simulation studies and compare it with four other fast nonparametric methods in the literature. We apply the proposed approach to three datasets including one from a large epidemiologic study. Matlab codes for the simulation and data analyses using the proposed approach are available online in the supplemental materials.
机译:在大样本和高维中应用贝叶斯非参数方法越来越引起人们的兴趣。由于马尔可夫链蒙特卡洛(MCMC)算法通常不可行,因此迫切需要更快的算法。本文提出了一种在Dirichlet过程混合(DPM)模型中进行推理的快速方法。作为模型选择问题,将主题划分为集群,我们提出了一种顺序贪婪搜索算法来选择划分。然后,当选择共轭先验时,在选定分区上有条件地产生的后验将以封闭形式提供。这种方法允许测试参数模型与基于贝叶斯因素的非参数替代方案。我们使用仿真研究评估该方法,并将其与文献中的其他四种快速非参数方法进行比较。我们将建议的方法应用于三个数据集,其中包括来自大型流行病学研究的一个数据集。使用所建议的方法进行仿真和数据分析的Matlab代码可在补充材料中在线获得。

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