首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >Bayesian analysis of mixture models with an unknown number of components - An alternative to reversible jump methods
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Bayesian analysis of mixture models with an unknown number of components - An alternative to reversible jump methods

机译:组件数量未知的混合模型的贝叶斯分析-可逆跳跃方法的替代方法

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Richardson and Green present a method of performing a Bayesian analysis of data from a finite mixture distribution with an unknown number of components. Their method is a Markov Chain Monte Carlo (MCMC) approach, which makes use of the "reversible jump" methodology described by Green. We describe an alternative MCMC method which views the parameters of the model as a (marked point process, extending methods suggested by Ripley to create a Markov birth-death process with an appropriate stationary distribution. Our method is easy Co implement, even in the case of data in more than one dimension, and we illustrate it on both univariate and bivariate data. There appears to be considerable potential for applying these ideas to other contexts, as an alternative to more general reversible jump methods, and we conclude with a brief discussion of how this might be achieved. [References: 45]
机译:理查森(Richardson)和格林(Green)提出了一种方法,该方法对具有未知数量组分的有限混合物分布进行数据的贝叶斯分析。他们的方法是马尔可夫链蒙特卡洛(MCMC)方法,该方法利用了格林描述的“可逆跳”方法。我们描述了另一种MCMC方法,该方法将模型的参数视为(标记点过程,扩展了Ripley建议的方法,以创建具有适当平稳分布的Markov出生-死亡过程。即使在这种情况下,我们的方法也很容易实现在一个以上的维度上对数据进行分析,并在单变量和双变量数据上进行了说明,将这些思想应用于其他情况似乎具有很大的潜力,作为更通用的可逆跳转方法的替代方法,我们在最后进行了简要讨论关于如何实现的[参考:45]

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