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Bayesian Modeling of Associations in Bivariate Piecewise Linear Mixed-Effects Models

机译:双变量分段线性混合效应模型中关联的贝叶斯建模

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Longitudinal processes rarely occur in isolation; often the growth curves of 2 or more variables are interdependent. Moreover, growth curves rarely exhibit a constant pattern of change. Many educational and psychological phenomena are comprised of different developmental phases (segments). Bivariate piecewise linear mixed-effects models (BPLMEM) are a useful and flexible statistical framework that allow simultaneous modeling of 2 processes that portray segmented change and investigates their associations over time. The purpose of the present study was to develop a BPLMEM using a Bayesian inference approach allowing the estimation of the association between the error variances and providing a more robust modeling choice for the joint random-effects of the 2 processes. This study aims to improve upon the limitations of the prior literature on bivariate piecewise mixed-effects models, such as only allowing the modeling of uncorrelated residual errors across the 2 longitudinal processes and restricting modeling choices for the random effects. The performance of the BPLMEM was investigated via a Monte Carlo simulation study. Furthermore, the utility of BPLMEM was illustrated by using a national educational dataset, Early Childhood Longitudinal Study-Kindergarten Cohort (ECLS-K), where we examined the joint development of mathematics and reading achievement scores and the association between their trajectories over 7 measurement occasions. The findings obtained shed new light on the relationship between these 2 prominent educational domains over time. Translational Abstract Longitudinal processes rarely occur in isolation; often the growth curves of two or more variables are interdependent. For instance, mathematics and reading achievement might not evolve independently over time but rather their trajectories may be associated along an educational time span. Moreover, longitudinal trajectories rarely exhibit a constant pattern of change. Many educational and psychological phenomena are comprised of different developmental phases (segments). Piecewise models describe nonlinear trajectories that have distinct rates of growth corresponding to different segments of development over time. The purpose of the present study was to develop a bivariate piecewise linear mixed-effects model (BPLMEM) under a Bayesian framework to allow simultaneous modeling of two processes that depict segmented change and investigate their associations over time. That is, two longitudinal variables of interest that portray differentiated segments of growth are modeled simultaneously with the objective of examining the relation between the growth curves as they unfold over the time span under study. The proposed Bayesian BPLMEM aims to improve upon the limitations of previous literature. Model performance was investigated via a Monte Carlo simulation study. Furthermore, the utility of the Bayesian BPLMEM was illustrated by using a national educational dataset, Early Childhood Longitudinal Study-Kindergarten Cohort (ECLS-K), where we examined the joint development of mathematics and reading achievement scores and the association between their trajectories over seven measurement occasions. The findings obtained shed new light on the relationship between these two prominent educational domains over time.
机译:纵向过程很少发生在隔离;通常两个或更多变量的增长曲线是相互依存的。很少表现出不断变化的模式。教育和心理现象由不同的发展阶段(段)。mixed-effects模型(BPLMEM)是一个有用的和灵活的统计框架,允许同时2流程建模描述分段变化以及对他们进行调查随着时间的推移协会。本研究是开发一个BPLMEM使用贝叶斯推理方法允许估计误差之间的关系差异,提供一个更健壮的建模的联合随机选择2流程。在二元之前文献的局限性分段mixed-effects模型,只等让不相关的残留的建模跨两个纵向流程和错误限制建模为随机选择效果。通过蒙特卡罗模拟研究调查。此外,BPLMEM的效用说明了通过使用一个国家教育数据集,童年早期纵向Study-Kindergarten队列(ECLS-K),我们的地方研究了数学和共同发展阅读成就分数和协会他们的轨迹之间7测量场合。在这两个突出的关系教育领域。抽象的纵向流程很少发生隔离;变量是相互依存的。数学和阅读成绩可能不会随着时间的推移发展独立而是他们沿着一个轨迹可能是相关的教育时间跨度。轨迹很少表现出不变的模式改变。是由不同的现象发展阶段(段)。描述非线性轨迹对应不同的增长率不同领域的发展。本研究的目的是开发一个二维分段线性mixed-effects模型在贝叶斯框架下允许(BPLMEM)同步建模的两个过程描述分段变化和他们进行调查随着时间的推移协会。感兴趣的变量描述有区别同时段的增长进行建模的客观研究的关系增长曲线之间展开了时间跨度下的研究。BPLMEM旨在改进的局限性以前的文献。通过蒙特卡罗模拟研究调查。此外,贝叶斯BPLMEM的效用被使用了国家教育数据集,童年早期纵向Study-Kindergarten队列(ECLS-K),我们的地方研究了数学和共同发展阅读成就分数和协会之间的轨迹在七测量场合。这两个突出的关系教育领域。

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