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Bayesian analysis for mixture of latent variable hidden Markov models with multivariate longitudinal data

机译:多变量隐马尔可夫模型与多变量纵向数据混合的贝叶斯分析

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Latent variable hidden Markov models (LVHMMs) are important statistical methods in exploring the possible heterogeneity of data and explaining the pattern of subjects moving from one group to another over time. Classic subject- and/or time-homogeneous assumptions on transition matrices in transition model as well as the emission distribution in the observed process may be inappropriate to interpret heterogeneity at the subject level. For this end, a general extension of LVHMM is proposed to address the heterogeneity of multivariate longitudinal data both at the subject level and the occasion level. The main modeling strategy is that the observed time sequences are first grouped into different clusters, and then within each cluster the observed sequences are formulated via latent variable hidden Markov model. The local heterogeneity at the occasion level is characterized by the distribution related to the latent states, while the global heterogeneity at the subject level is identified with the finite mixture model. Compared to the existing methods, an appeal underlying the proposal is its capacity of accommodating non-homogeneous patterns of state sequences and emission distributions across the subjects simultaneously. As a result, the proposal provides a comprehensive framework for exploring various kinds of relevance among the multivariate longitudinal data. Within the Bayesian paradigm, Markov Chains Monte Carlo (MCMC) method is used to implement posterior analysis. Gibbs sampler is used to draw observations from the related full conditionals and posterior inferences are carried out based on these simulated observations. Empirical results including simulation studies and a real example are used to illustrate the proposed methodology. (C) 2018 Elsevier B.V. All rights reserved.
机译:潜在的变量隐藏马尔可夫模型(LVHMMS)是探索数据可能的异质性并解释从一个组移动到另一个组的受试者模式的重要统计方法。转换模型中转换矩阵的经典主题和/或时间 - 均匀假设以及观察过程中的发射分布可能是不合适的,以解释受试者水平的异质性。为此,提出了LVHMM的一般延伸,以解决在主题水平和场合水平的多变量纵向数据的异质性。主要建模策略是观察时间序列首先将观察到的簇分组,然后在每个聚类内通过潜在可变隐马尔可夫模型制定观察到的序列。在场合水平的局部异质性的特征在于与潜在的态有关的分布,而受试者水平的全体异质性与有限混合物模型鉴定。与现有方法相比,该提案的上诉是其能够同时在对象上容纳非均匀的状态序列和排放分布的能力。因此,该提案为探索多变量纵向数据之间的各种相关性提供了全面的框架。在贝叶斯范式范围内,马尔可夫链蒙特卡罗(MCMC)方法用于实施后部分析。 Gibbs采样器用于从相关的完整条件和后推,基于这些模拟观察开始观察。包括模拟研究和真实例子的经验结果用于说明所提出的方法。 (c)2018 Elsevier B.v.保留所有权利。

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