Williams Donald R, Martin Stephen R, Liu Siwei, Rast Philippe
Department of Psychology, University of California, Davis, CA, USA.
Eur J Psychol Assess. 2020 Nov;36(6):981-997. doi: 10.1027/1015-5759/a000624. Epub 2021 Jan 19.
Intensive longitudinal studies and experience sampling methods are becoming more common in psychology. While they provide a unique opportunity to ask novel questions about within-person processes relating to personality, there is a lack of methods specifically built to characterize the interplay between traits and states. We thus introduce a Bayesian multivariate mixed-effects location scale model (M-MELSM). The formulation can simultaneously model both personality traits (the location) and states (the scale) for multivariate data common to personality research. Variables can be included to predict either (or both) the traits and states, in addition to estimating random effects therein. This provides correlations between location and scale random effects, both across and within each outcome, which allows for characterizing relations between any number of personality traits and the corresponding states. We take a Bayesian approach, not only to make estimation possible, but also because it provides the necessary information for use in psychological applications such as hypothesis testing. To illustrate the model we use data from 194 individuals that provided daily ratings of negative and positive affect, as well as their physical activity in the form of step counts over 100 consecutive days. We describe the fitted model, where we emphasize, with visualization, the richness of information provided by the M-MELSM. We demonstrate Bayesian hypothesis testing for the correlations between the random effects. We conclude by discussing limitations of the MELSM in general and extensions to the M-MELSM specifically for personality research.
密集纵向研究和经验取样方法在心理学中越来越普遍。虽然它们为提出关于与人格相关的个体内部过程的新问题提供了独特的机会,但缺乏专门用于刻画特质与状态之间相互作用的方法。因此,我们引入了一种贝叶斯多变量混合效应位置尺度模型(M-MELSM)。该公式可以同时对人格研究中常见的多变量数据的人格特质(位置)和状态(尺度)进行建模。除了估计其中的随机效应外,还可以纳入变量来预测特质和状态(或两者)。这提供了每个结果之间以及每个结果内部位置和尺度随机效应之间的相关性,从而能够刻画任意数量的人格特质与相应状态之间的关系。我们采用贝叶斯方法,不仅是为了使估计成为可能,还因为它为假设检验等心理学应用提供了必要的信息。为了说明该模型,我们使用了来自194名个体的数据,这些个体连续100天提供了负面和正面情绪的每日评分,以及以步数形式表示的身体活动数据。我们描述了拟合模型,在此过程中,我们通过可视化强调了M-MELSM提供的丰富信息。我们展示了对随机效应之间相关性的贝叶斯假设检验。最后,我们讨论了MELSM的一般局限性以及M-MELSM专门针对人格研究的扩展。