Curran Patrick J, Bauer Daniel J, Willoughby Michael T
Department of Psychology, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599-3270, USA.
Psychol Methods. 2004 Jun;9(2):220-37. doi: 10.1037/1082-989X.9.2.220.
A key strength of latent curve analysis (LCA) is the ability to model individual variability in rates of change as a function of 1 or more explanatory variables. The measurement of time plays a critical role because the explanatory variables multiplicatively interact with time in the prediction of the repeated measures. However, this interaction is not typically capitalized on in LCA because the measure of time is rather subtly incorporated via the factor loading matrix. The authors' goal is to demonstrate both analytically and empirically that classic techniques for probing interactions in multiple regression can be generalized to LCA. A worked example is presented, and the use of these techniques is recommended whenever estimating conditional LCAs in practice.
潜在曲线分析(LCA)的一个关键优势在于能够将变化率的个体差异建模为一个或多个解释变量的函数。时间的测量起着关键作用,因为在重复测量的预测中,解释变量与时间存在乘法交互作用。然而,这种交互作用在LCA中通常未被充分利用,因为时间的测量是通过因子载荷矩阵相当巧妙地纳入的。作者的目标是通过分析和实证证明,多元回归中探索交互作用的经典技术可以推广到LCA。文中给出了一个实例,并建议在实际估计条件LCA时使用这些技术。