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Bayesian Diagnostics of Hidden Markov Structural Equation Models with Missing Data

机译:缺失数据隐马尔可夫结构方程模型的贝叶斯诊断

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Cocaine is a type of drug that functions to increase the availability of the neurotransmitter dopamine in the brain. However, cocaine dependence or abuse is highly related to an increased risk of psychiatric disorders and deficits in cognitive performance, attention, and decision-making abilities. Given the chronic and persistent features of drug addiction, the progression of abstaining from cocaine often evolves across several states, such as addiction to, moderate dependence on, and swearing off cocaine. Hidden Markov models (HMMs) are well suited to the characterization of longitudinal data in terms of a set of unobservable states, and have increasingly been used to uncover the dynamic heterogeneity in progressive diseases or activities. However, the existence of outliers or influential points may misidentify the hidden states and distort the associated inference. In this study, we develop a Bayesian local influence procedure for HMMs with latent variables in the presence of missing data. The proposed model enables us to investigate the dynamic heterogeneity of multivariate longitudinal data, reveal how the interrelationships among latent variables change from one state to another, and simultaneously conduct statistical diagnosis for the given data, model assumptions, and prior inputs. We apply the proposed procedure to analyze a dataset collected by the UCLA center for advancing longitudinal drug abuse research. Several outliers or influential points that seriously influence estimation results are identified and removed. The proposed procedure also discovers the effects of treatment and individuals' psychological problems on cocaine use behavior and delineates their dynamic changes across the cocaine-addiction states.
机译:可卡因是一种功能,可用于增加大脑中神经递质多巴胺的可用性。然而,可卡因依赖或滥用与认知性能,关注和决策能力的心理障碍和赤字的风险增加了高度相关。鉴于药物成瘾的慢性和持续特征,来自可卡因的弃权的进展通常会在几个状态演变,例如对依赖的成瘾,适度依赖和剥离可卡因。隐藏的马尔可夫模型(HMMS)非常适合于纵向数据的表征,就一组不可观察的状态而言,并且越来越多地用于揭示逐步疾病或活动中的动态异质性。然而,异常值或影响点的存在可能会错误地定异化隐藏状态并扭曲相关的推断。在这项研究中,我们在存在缺失数据存在下,开发贝叶斯本地影响程序,用于潜在变量的潜伏变量。该拟议的模型使我们能够研究多变量纵向数据的动态异质性,揭示了潜在变量之间的相互关系如何从一个状态变化到另一个状态,并同时对给定数据,模型假设和先前输入进行统计诊断。我们应用建议的程序来分析UCLA中心收集的数据集,以推进纵向药物滥用研究。确定并移除了严重影响估算结果的几个异常值或影响点。该拟议的程序还发现了治疗和个人心理问题对可卡因使用行为的影响,并描绘了对可卡因成瘾状态的动态变化。

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