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Bayesian Multimodel Inference by RJMCMC: A Gibbs Sampling Approach

机译:RJMCMC的贝叶斯多模型推断:一种吉布斯采样方法

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Bayesian multimodel inference treats a set of candidate models as the sample space of a latent categorical random variable, sampled once; the data at hand are modeled as having been generated according to the sampled model. Model selection and model averaging are based on the posterior probabilities for the model set. Reversible-jump Markov chain Monte Carlo (RJMCMC) extends ordinary MCMC methods to this meta-model. We describe a version of RJMCMC that intuitively represents the process as Gibbs sampling with alternating updates of a categorical variable M (for Model) and a "palette" of parameters Ψ, from which any of the model-specific parameters can be calculated. Our representation makes plain how model-specific Monte Carlo outputs (analytical or numerical) can be post-processed to compute model weights or Bayes factors. We illustrate the procedure with several examples.
机译:贝叶斯多模型推论将一组候选模型视为一个潜在的分类随机变量的样本空间,采样一次。现有数据被建模为已根据采样模型生成。模型选择和模型平均基于模型集的后验概率。可逆跳马尔可夫链蒙特卡罗(RJMCMC)将普通的MCMC方法扩展到此元模型。我们描述了一种RJMCMC版本,该版本直观地将过程表示为Gibbs采样,同时交替更新分类变量M(用于模型)和参数“的“选项板”,可以从中计算任何特定于模型的参数。我们的表示清楚地说明了如何对模型特定的蒙特卡洛输出(分析或数值)进行后处理,以计算模型权重或贝叶斯因子。我们用几个例子来说明这个过程。

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