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A Fully Bayesian Analysis of Multivariate Latent Class Models with an Application to Metric Conjoint Analysis

机译:多元潜在类模型的全贝叶斯分析及其在度量联合分析中的应用

摘要

In this paper we head for a fully Bayesian analysis of the latent class model with a priori unknown number of classes. Estimation is carried out by means of Markov Chain Monte Carlo (MCMC) methods. We deal explicitely with the consequences the unidentifiability of this type of model has on MCMC estimation. Joint Bayesian estimation of all latent variables, model parameters, and parameters determining the probability law of the latent process is carried out by a new MCMC method called permutation sampling. In a first run we use the random permutation sampler to sample from the unconstrained posterior. We will demonstrate that a lot of important information, such as e.g. estimates of the subject-specific regression coefficients, is available from such an unidentified model. The MCMC output of the random permutation sampler is explored in order to find suitable identifiability constraints. In a second run we use the permutation sampler to sample from the constrained posterior by imposing identifiablity constraints. The unknown number of classes is determined by formal Bayesian model comparison through exact model likelihoods. We apply a new method of computing model likelihoods for latent class models which is based on the method of bridge sampling. The approach is applied to simulated data and to data from a metric conjoint analysis in the Austrian mineral water market. (author's abstract)
机译:在本文中,我们将对先验未知类数的潜在类模型进行全面的贝叶斯分析。估计是通过Markov Chain Monte Carlo(MCMC)方法进行的。我们明确处理这种类型的模型的不可识别性对MCMC估计的影响。所有潜在变量,模型参数以及确定潜在过程概率定律的参数的联合贝叶斯估计是通过一种称为置换抽样的新MCMC方法进行的。在第一轮中,我们使用随机排列采样器从无约束后验中采样。我们将展示许多重要信息,例如特定对象回归系数的估计值可从此类未知模型中获得。探索随机置换采样器的MCMC输出,以找到合适的可识别性约束。在第二轮中,我们使用置换采样器通过施加可识别性约束从约束后验中采样。类的数目未知是通过精确的模型似然性通过正式的贝叶斯模型比较来确定的。我们基于桥梁抽样的方法,为潜在类模型应用了一种计算模型似然性的新方法。该方法适用于模拟数据以及来自奥地利矿泉水市场的度量联合分析数据。 (作者的摘要)

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