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Bayesian analysis of latent variable models with non-ignorable missing outcomes from exponential family.

机译:贝叶斯对指数族不可忽略的缺失结果的潜在变量模型的分析。

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摘要

To provide a comprehensive framework for analysing complex non-normal medical and biological data, we propose a Bayesian approach for a non-linear latent variable model with covariates, and non-ignorable missing data, under the exponential family of distributions. The non-ignorable missing mechanism is defined via a logistic regression model. Based on conjugate prior distributions, full conditional distributions for the implementation of Markov chain Monte Carlo methods in simulating observations from the joint posterior distribution are derived. These observations are used in computing the Bayesian estimates, as well as in implementing a path sampling procedure to evaluate the Bayes factor for model comparison. The proposed methods are illustrated using real data from a study on the non-adherence of hypertension patients.
机译:为了提供一个用于分析复杂的非正常医学和生物学数据的综合框架,我们针对具有指数分布的具有协变量和不可忽略的缺失数据的非线性潜在变量模型提出了一种贝叶斯方法。不可忽略的缺失机制是通过逻辑回归模型定义的。基于共轭先验分布,推导了用于实现马尔可夫链蒙特卡罗方法以模拟来自联合后验分布的观测值的全条件分布。这些观察结果用于计算贝叶斯估计,以及用于执行路径采样过程以评估用于模型比较的贝叶斯因子。使用有关高血压患者不依从性研究的真实数据说明了所提出的方法。

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