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Additive mixed models with Dirichlet process mixture and P-spline priors

机译:具有Dirichlet过程混合物和P样条先验的加性混合模型

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Longitudinal data often require a combination of flexible time trends and individual-specific random effects. For example, our methodological developments are motivated by a study on longitudinal body mass index profiles of children col lected with the aim to gain a better understanding of factors driving childhood obesity. The high amount of nonlinearity and heterogeneity in these data and the complexity of the data set with a large number of observations, long longitudinal profiles and clusters of observations with specific deviations from the population model make the application challenging and prevent the application of standard growth curve models. We propose a fully Bayesian approach based on Markov chain Monte Carlo simu lation techniques that allows for the semiparametric specification of both the trend function and the random effects distribution. Bayesian penalized splines are consid ered for the former, while a Dirichlet process mixture (DPM) specification allows for an adaptive amount of deviations from normality for the latter. The advantages of such DPM prior structures for random effects are investigated in terms of a simula tion study to improve the understanding of the model specification before analyzing the childhood obesity data.
机译:纵向数据通常需要灵活的时间趋势和特定于个体的随机效应的组合。例如,我们的方法学发展是受到对儿童纵向体重指数分布图的研究的启发,目的是为了更好地了解导致儿童肥胖的因素。这些数据中存在大量的非线性和异质性,以及具有大量观测值,较长的纵剖面和观测值聚类的数据集的复杂性,这些观测值与总体模型存在特定偏差,这使应用程序具有挑战性,并阻止了标准增长曲线的应用楷模。我们提出了一种基于马尔可夫链蒙特卡罗模拟技术的完全贝叶斯方法,该方法允许对趋势函数和随机效应分布进行半参数指定。对于前者,考虑了贝叶斯惩罚样条,而Dirichlet过程混合(DPM)规范允许对后者的正态性进行适度的偏差。通过模拟研究来研究这种DPM先验结构对随机效应的优势,以在分析儿童肥胖数据之前提高对模型规范的理解。

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