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A Comparison of Methods for Estimating Relationships in the Change Between Two Time Points for Latent Variables

机译:对潜在变量的两个时间点之间关系的方法比较

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摘要

Collection and analysis of longitudinal data is an important tool in understanding growth and development over time in a whole range of human endeavors. Ideally, researchers working in the longitudinal framework are able to collect data at more than two points in time, as this will provide them with the potential for a deeper understanding of the development processes under study and a much broader array of statistical modeling options. However, in some circumstances data collection is limited to only two time points, perhaps because of resource limitations, issues with the context in which the data are collected, or the nature of the trait under study. In such instances, researchers may still want to learn about complex relationships in the data, such as the correlation between changes in latent traits that are being measured. However, with only two data points, standard approaches for modeling such relationships, such as growth curve modeling, cannot be used. The current simulation study compares the performance of two methods for estimating the correlations among changes in latent variables between two points in time, the two-wave latent change score model and the latent difference factor model. Results of the simulation study showed that both methods yielded generally accurate estimates of the correlation between changes in a latent trait, with relatively small standard errors. Estimation bias and standard errors were lower with larger samples, larger factor loading magnitudes, and more indicators per factor. Further comparisons between the methods and implications of these results are discussed.
机译:纵向数据的收集和分析是在整个人类努力中了解增长和发展的重要工具。理想情况下,在纵向框架中工作的研究人员能够及时收集数据以上的数据,因为这将为他们提供更深入地了解研究下的开发过程和更广泛的统计建模选项。然而,在某些情况下,数据收集仅限于两个时间点,可能是由于资源限制,所在上下文的问题,其中收集数据,或在研究下的特征的性质。在此类实例中,研究人员可能仍然希望了解数据中的复杂关系,例如正在测量的潜在特征之间的变化之间的相关性。然而,只有两个数据点,不能使用用于建模这种关系的标准方法,例如生长曲线建模。目前的仿真研究比较了两种方法来估算两点之间潜在变量的变化之间的相关性的性能,两波潜改变得分模型和潜伏因子模型。仿真研究结果表明,两种方法都会产生潜在特征变化之间的相关性的准确估计,标准误差相对较小。估计偏差和标准误差较低,具有较大的样品,较大的因子加载量大,每个因素的更多指示剂。讨论了这些结果的方法和含义之间的进一步比较。

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