Psychometric network models from time-series and panel data

被引:0
|
作者
Sacha Epskamp
机构
[1] University of Amsterdam,Department of Psychology: Psychological Methods Groups
来源
Psychometrika | 2020年 / 85卷
关键词
network psychometrics; Gaussian graphical model; structural equation modeling; dynamics; time-series data; panel data;
D O I
暂无
中图分类号
学科分类号
摘要
Researchers in the field of network psychometrics often focus on the estimation of Gaussian graphical models (GGMs)—an undirected network model of partial correlations—between observed variables of cross-sectional data or single-subject time-series data. This assumes that all variables are measured without measurement error, which may be implausible. In addition, cross-sectional data cannot distinguish between within-subject and between-subject effects. This paper provides a general framework that extends GGM modeling with latent variables, including relationships over time. These relationships can be estimated from time-series data or panel data featuring at least three waves of measurement. The model takes the form of a graphical vector-autoregression model between latent variables and is termed the ts-lvgvar when estimated from time-series data and the panel-lvgvar when estimated from panel data. These methods have been implemented in the software package psychonetrics, which is exemplified in two empirical examples, one using time-series data and one using panel data, and evaluated in two large-scale simulation studies. The paper concludes with a discussion on ergodicity and generalizability. Although within-subject effects may in principle be separated from between-subject effects, the interpretation of these results rests on the intensity and the time interval of measurement and on the plausibility of the assumption of stationarity.
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收藏
页码:206 / 231
页数:25
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