Research Group of Quantitative Psychology and Individual Differences, Faculty of Psychology and Educational Sciences, KU Leuven-University of Leuven.
Methodology and Statistics, Faculty of Social and Behavioural Sciences, Utrecht Universit.
Psychol Methods. 2017 Sep;22(3):409-425. doi: 10.1037/met0000085. Epub 2016 Sep 26.
In psychology, the use of intensive longitudinal data has steeply increased during the past decade. As a result, studying temporal dependencies in such data with autoregressive modeling is becoming common practice. However, standard autoregressive models are often suboptimal as they assume that parameters are time-invariant. This is problematic if changing dynamics (e.g., changes in the temporal dependency of a process) govern the time series. Often a change in the process, such as emotional well-being during therapy, is the very reason why it is interesting and important to study psychological dynamics. As a result, there is a need for an easily applicable method for studying such nonstationary processes that result from changing dynamics. In this article we present such a tool: the semiparametric TV-AR model. We show with a simulation study and an empirical application that the TV-AR model can approximate nonstationary processes well if there are at least 100 time points available and no unknown abrupt changes in the data. Notably, no prior knowledge of the processes that drive change in the dynamic structure is necessary. We conclude that the TV-AR model has significant potential for studying changing dynamics in psychology. (PsycINFO Database Record
在心理学中,过去十年中密集纵向数据的使用急剧增加。因此,使用自回归模型研究此类数据中的时间依赖性已成为常见做法。然而,标准自回归模型通常并不理想,因为它们假设参数是时不变的。如果动态变化(例如,过程的时间依赖性变化)支配时间序列,则会出现问题。通常情况下,过程的变化(例如,治疗期间的情绪健康)正是研究心理动态的原因。因此,需要一种易于应用的方法来研究由于动态变化而产生的非平稳过程。在本文中,我们提出了这样一种工具:半参数 TV-AR 模型。我们通过模拟研究和实证应用表明,如果有至少 100 个时间点可用且数据中没有未知的突然变化,那么 TV-AR 模型可以很好地逼近非平稳过程。值得注意的是,不需要对驱动动态结构变化的过程有先验知识。我们得出结论,TV-AR 模型在研究心理学中的变化动态方面具有重要潜力。