Department of Marketing Bigdata, Mokwon University.
Department of Statistics, Korea University.
Multivariate Behav Res. 2022 Mar-May;57(2-3):341-355. doi: 10.1080/00273171.2020.1848515. Epub 2020 Nov 25.
Research on stage-sequential shifts across multiple latent classes can be challenging in part because it may not be possible to observe the particular stage-sequential pattern of a single latent class variable directly. In addition, one latent class variable may affect or be affected by other latent class variables and the associations among multiple latent class variables are not likely to be directly observed either. To address this difficulty, we propose a multivariate latent class analysis for longitudinal data, joint latent class profile analysis (JLCPA), which provides a principle for the systematic identification of not only associations among multiple discrete latent variables but sequential patterns of those associations. We also propose the recursive formula to the EM algorithm to overcome the computational burden in estimating the model parameters, and our simulation study shows that the proposed algorithm is much faster in computing estimates than the standard EM method. In this work, we apply a JLCPA using data from the National Longitudinal Survey of Youth 1997 in order to investigate the multiple drug-taking behavior of early-onset drinkers from their adolescence, via young adulthood, to adulthood.
跨多个潜在类别进行阶段顺序转变的研究具有一定挑战性,部分原因是可能无法直接观察到单个潜在类别变量的特定阶段顺序模式。此外,一个潜在类别变量可能会影响或被其他潜在类别变量影响,并且多个潜在类别变量之间的关联也不太可能直接观察到。为了解决这个困难,我们提出了一种用于纵向数据的多元潜在类别分析方法,即联合潜在类别剖面分析 (JLCPA),它为系统识别多个离散潜在变量之间的关联以及这些关联的顺序模式提供了一种原则。我们还提出了 EM 算法的递归公式,以克服估计模型参数的计算负担,我们的模拟研究表明,与标准 EM 方法相比,所提出的算法在计算估计值方面要快得多。在这项工作中,我们使用 1997 年全国青年纵向调查的数据应用 JLCPA,以调查青少年期、青年期到成年期早期饮酒者的多种药物使用行为。