Longitudinal data analysis has been widely employed to examine between-individual differences in within-individual changes. One challenge of such analyses is that the rate-of-change is only available indirectly when change patterns are nonlinear with respect to time. Latent change score models (LCSMs), which can be employed to investigate the change in rate-of-change at the individual level, have been developed to address this challenge. We extend an existing LCSM with the Jenss-Bayley growth curve \cite[Chapter~18]{Grimm2016growth} and propose a novel expression for change scores that allows for (1) unequally-spaced study waves and (2) individual measurement occasions around each wave. We also extend the existing model to estimate the individual ratio of the growth acceleration (that largely determines the trajectory shape and is viewed as the most important parameter in the Jenss-Bayley model). We present the proposed model by a simulation study and a real-world data analysis. Our simulation study demonstrates that the proposed model can estimate the parameters unbiasedly and precisely and exhibit target confidence interval coverage. The simulation study also shows that the proposed model with the novel expression for the change scores outperforms the existing model. An empirical example using longitudinal reading scores shows that the model can estimate the individual ratio of the growth acceleration and generate individual rate-of-change in practice. We also provide the corresponding code for the proposed model.
翻译:纵向数据分析被广泛用于研究个人内部变化中的个人差异。这种分析的一个挑战是,变化率只有在变化模式非线性时,才能间接得到变化率。可以用来调查个人变化率变化的变化的延迟变化得分模型(LCSMs)已经开发出来,用于调查个人层面的变化率变化,以应对这一挑战。我们通过模拟研究和真实世界数据分析来介绍拟议的模型。我们的模拟研究表明,拟议的模型可以对参数进行公正和准确的估算,并展示目标间隔范围。模拟研究还表明,拟议的模型与新的增长加速率相比,还能够提供个人增长率模型。