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Longitudinal data analysis using multilevel linear modeling (MLM): Fitting an optimal variance-covariance structure.

机译:使用多层线性建模(MLM)进行纵向数据分析:拟合最佳方差-协方差结构。

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摘要

This dissertation focuses on issues related to fitting an optimal variance-covariance structure in multilevel linear modeling framework with two Monte Carlo simulation studies.;In the first study, the author evaluated the performance of common fit statistics such as Likelihood Ratio Test (LRT), Akaike Information Criterion (AIC), and Bayesian Information Criterion (BIC) and a new proposed method, standardized root mean square residual (SRMR), for selecting the correct within-subject covariance structure. Results from the simulated data suggested SRMR had the best performance in selecting the optimal covariance structure. A pharmaceutical example was also used to evaluate the performance of these fit statistics empirically. The LRT failed to decide which is a better model because LRT can only be used for nested models. SRMR, on the other hand, had congruent result as AIC and BIC and chose ARMA(1,1) as the optimal variance-covariance structure.;In the second study, the author adopted a first-order autoregressive structure as the true within-subject V-C structure with variability in the intercept and slope (estimating tau00 and tau11 only) and investigated the consequence of misspecifying different levels/types of the V-C matrices simultaneously on the estimation and test of significance for the growth/fixed-effect and random-effect parameters, considering the size of the autoregressive parameter, magnitude of the fixed effect parameters, number of cases, and number of waves. The result of the simulation study showed that the commonly-used identity within-subject structure with unstructured between-subject matrix performed equally well as the true model in the evaluation of the criterion variables. On the other hand, other misspecified conditions, such as Under G & Over R conditions and Generally misspecified G & R conditions had biased standard error estimates for the fixed effect and lead to inflated Type I error rate or lowered statistical power.;The two studies bridged the gap between the theory and practical application in the current literature. More research can be done to test the effectiveness of proposed SRMR in searching for the optimal V-C structure under different conditions and evaluate the impact of different types/levels of misspecification with various specifications of the within- and between- level V-C structures simultaneously.
机译:本论文着重于通过两个蒙特卡洛模拟研究在多级线性建模框架中拟合最佳方差-协方差结构的问题。在第一项研究中,作者评估了诸如李克比测验(LRT)等通用拟合统计量的性能, Akaike信息准则(AIC)和贝叶斯信息准则(BIC)以及一种新提出的方法,即标准化均方根残差(SRMR),用于选择正确的对象内部协方差结构。模拟数据的结果表明,SRMR在选择最佳协方差结构方面具有最佳性能。还使用了一个药物实例来凭经验评估这些拟合统计的性能。 LRT无法确定哪个模型更好,因为LRT仅可用于嵌套模型。另一方面,SRMR的结果与AIC和BIC一致,因此选择ARMA(1,1)作为最佳方差-协方差结构。在第二项研究中,作者采用了一阶自回归结构作为真实的内部-在截距和斜率上具有可变性的主题VC结构(仅估计tau00和tau11),并研究了同时错误指定VC矩阵的不同级别/类型的结果对估计/检验增长/固定效应和随机效应的重要性的结果参数,考虑自回归参数的大小,固定效果参数的大小,案例数和波数。仿真研究的结果表明,在标准变量的评估中,具有非结构化对象间矩阵的常用身份内部对象结构表现与真实模型相同。另一方面,其他错误指定的条件(例如,在G&Over R条件下和一般错误指定的G&R条件)对固定效果的标准误差估计产生了偏差,导致I型错误率膨胀或统计功效降低。弥合了当前文献中理论与实际应用之间的鸿沟。可以做更多的研究来测试所建议的SRMR在不同条件下寻找最佳V-C结构的有效性,并同时评估不同类型/水平的误规格对水平内和水平V-C结构的各种规格的影响。

著录项

  • 作者

    Lee, Yuan-Hsuan.;

  • 作者单位

    Texas A&M University.;

  • 授予单位 Texas A&M University.;
  • 学科 Education Educational Psychology.;Psychology Psychometrics.;Statistics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 95 p.
  • 总页数 95
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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