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首页> 外文期刊>Journal of applied statistics >Two-stage hierarchical modeling for analysis of subpopulations in conditional distributions
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Two-stage hierarchical modeling for analysis of subpopulations in conditional distributions

机译:两阶段分层建模,用于分析条件分布中的子种群

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摘要

In this work, we develop the modeling and estimation approach for the analysis of cross-sectional clustered data with multimodal conditional distributions, where the main interest is in analysis of subpopulations. It is proposed to model such data in a hierarchical model with conditional distributions viewed as finite mixtures of normal components. With a large number of observations in the lowest level clusters, a two-stage estimation approach is used. In the first stage, the normal mixture parameters in each lowest level cluster are estimated using robust methods. Robust alternatives to the maximum-likelihood (ML) estimation are used to provide stable results even for data with conditional distributions such that their components may not quite meet normality assumptions. Then the lowest level cluster-specific means and standard deviations are modeled in a mixed effects model in the second stage. A small simulation study was conducted to compare performance of finite normal mixture population parameter estimates based on robust and ML estimation in stage 1. The proposed modeling approach is illustrated through the analysis of mice tendon fibril diameters data. Analyses results address genotype differences between corresponding components in the mixtures and demonstrate advantages of robust estimation in stage 1.
机译:在这项工作中,我们开发了用于分析具有多峰条件分布的横截面聚类数据的建模和估计方法,其中主要的兴趣是对子种群的分析。提出在具有条件分布的分层模型中对此类数据进行建模,条件分布被视为正态分量的有限混合。在最低级别的群集中有大量观测值,因此使用了两阶段估计方法。在第一阶段,使用稳健的方法估算每个最低级别群集中的正常混合物参数。最大似然(ML)估计的健壮替代方法甚至可以为具有条件分布的数据提供稳定的结果,以使它们的成分可能无法完全满足正态性假设。然后,在第二阶段,在混合效应模型中对最低级别的特定于集群的均值和标准差进行建模。进行了一个小型模拟研究,以比较在阶段1中基于鲁棒和ML估计的有限正常混合物种群参数估计的性能。通过对小鼠肌腱原纤维直径数据的分析,说明了所提出的建模方法。分析结果解决了混合物中相应成分之间的基因型差异,并证明了第1阶段稳健估计的优势。

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