Cho Sun-Joo, Brown-Schmidt Sarah, Clough Sharice, Duff Melissa C
Vanderbilt University, Nashville, USA.
Vanderbilt University Medical Center, Nashville, USA.
Psychometrika. 2024 Jul 17. doi: 10.1007/s11336-024-09986-1.
This paper presents a model specification for group comparisons regarding a functional trend over time within a trial and learning across a series of trials in intensive binary longitudinal eye-tracking data. The functional trend and learning effects are modeled using by-variable smooth functions. This model specification is formulated as a generalized additive mixed model, which allowed for the use of the freely available mgcv package (Wood in Package 'mgcv.' https://cran.r-project.org/web/packages/mgcv/mgcv.pdf , 2023) in R. The model specification was applied to intensive binary longitudinal eye-tracking data, where the questions of interest concern differences between individuals with and without brain injury in their real-time language comprehension and how this affects their learning over time. The results of the simulation study show that the model parameters are recovered well and the by-variable smooth functions are adequately predicted in the same condition as those found in the application.
本文提出了一种模型规范,用于在密集二元纵向眼动追踪数据中,对试验内随时间的功能趋势以及一系列试验中的学习情况进行组间比较。功能趋势和学习效应通过变量平滑函数进行建模。该模型规范被表述为广义相加混合模型,这使得可以在R语言中使用免费可得的mgcv包(Wood所著的《包'mgcv'》,网址为https://cran.r-project.org/web/packages/mgcv/mgcv.pdf,2023年)。该模型规范被应用于密集二元纵向眼动追踪数据,其中感兴趣的问题涉及有脑损伤和无脑损伤个体在实时语言理解方面的差异,以及这如何随时间影响他们的学习。模拟研究结果表明,在与应用中相同的条件下,模型参数能够很好地恢复,并且变量平滑函数能够得到充分预测。