Schönbrodt Felix D, Zygar-Hoffmann Caroline, Nestler Steffen, Pusch Sebastian, Hagemeyer Birk
Department of Psychology, Ludwig-Maximilians-Universität München, Leopoldstr. 13, 80802, München, Germany.
University of Münster, Münster, Germany.
Behav Res Methods. 2022 Aug;54(4):1869-1888. doi: 10.3758/s13428-021-01701-7. Epub 2021 Nov 1.
The investigation of within-person process models, often done in experience sampling designs, requires a reliable assessment of within-person change. In this paper, we focus on dyadic intensive longitudinal designs where both partners of a couple are assessed multiple times each day across several days. We introduce a statistical model for variance decomposition based on generalizability theory (extending P. E. Shrout & S. P. Lane, 2012), which can estimate the relative proportion of variability on four hierarchical levels: moments within a day, days, persons, and couples. Based on these variance estimates, four reliability coefficients are derived: between-couples, between-persons, within-persons/between-days, and within-persons/between-moments. We apply the model to two dyadic intensive experience sampling studies (n = 130 persons, 5 surveys each day for 14 days, ≥ 7508 unique surveys; n = 508 persons, 5 surveys each day for 28 days, ≥ 47764 unique surveys). Five different scales in the domain of motivational processes and relationship quality were assessed with 2 to 5 items: State relationship satisfaction, communal motivation, and agentic motivation; the latter consists of two subscales, namely power and independence motivation. Largest variance components were on the level of persons, moments, couples, and days, where within-day variance was generally larger than between-day variance. Reliabilities ranged from .32 to .76 (couple level), .93 to .98 (person level), .61 to .88 (day level), and .28 to .72 (moment level). Scale intercorrelations reveal differential structures between and within persons, which has consequences for theory building and statistical modeling.
对个体内部过程模型的研究通常在经验抽样设计中进行,这需要对个体内部变化进行可靠的评估。在本文中,我们关注的是二元密集纵向设计,即夫妻双方在几天内每天都要接受多次评估。我们引入了一种基于概化理论的方差分解统计模型(扩展了P.E. Shrout和S.P. Lane,2012年的研究),该模型可以估计四个层次水平上变异性的相对比例:一天内的时刻、天数、个体以及夫妻。基于这些方差估计值,得出了四个信度系数:夫妻间、个体间、个体内/天间以及个体内/时刻间。我们将该模型应用于两项二元密集经验抽样研究(n = 130人,每天进行5次调查,共14天,≥ 7508次独特调查;n = 508人,每天进行5次调查,共28天,≥ 47764次独特调查)。在动机过程和关系质量领域,用2至5个项目评估了五个不同的量表:状态关系满意度、共同动机和能动动机;后者由两个子量表组成,即权力动机和独立动机。最大的方差成分存在于个体、时刻、夫妻和天数水平上,其中日内方差通常大于日间方差。信度范围为.32至.76(夫妻水平)、.93至.98(个体水平)、.61至.88(天水平)以及.28至.72(时刻水平)。量表间的相互关系揭示了个体之间和个体内部的差异结构,这对理论构建和统计建模具有影响。