The Gaussian Graphical Model in Cross-Sectional and Time-Series Data

被引:504
|
作者
Epskamp, Sacha [1 ]
Waldorp, Lourens J. [1 ]
Mottus, Rene [2 ]
Borsboom, Denny [1 ]
机构
[1] Univ Amsterdam, Dept Psychol Methods, NL-1021 WX Amsterdam, Netherlands
[2] Univ Edinburgh, Dept Psychol, Edinburgh, Midlothian, Scotland
关键词
Time-series analysis; multilevel modeling; multivariate analysis; exploratory-data analysis; network modeling; DYNAMIC NETWORK STRUCTURE; COVARIANCE ESTIMATION; GRANGER CAUSALITY; BETWEEN-PERSON; WITHIN-PERSON; DEPRESSION; SELECTION; ASSOCIATION; REGRESSION; SEARCH;
D O I
10.1080/00273171.2018.1454823
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
We discuss the Gaussian graphical model (GGM; an undirected network of partial correlation coefficients) and detail its utility as an exploratory data analysis tool. The GGM shows which variables predict one-another, allows for sparse modeling of covariance structures, and may highlight potential causal relationships between observed variables. We describe the utility in three kinds of psychological data sets: data sets in which consecutive cases are assumed independent (e.g., cross-sectional data), temporally ordered data sets (e.g., n = 1 time series), and a mixture of the 2 (e.g., n > 1 time series). In time-series analysis, the GGM can be used to model the residual structure of a vector-autoregression analysis (VAR), also termed graphical VAR. Two network models can then be obtained: a temporal network and a contemporaneous network. When analyzing data from multiple subjects, a GGM can also be formed on the covariance structure of stationary meansthe between-subjects network. We discuss the interpretation of these models and propose estimation methods to obtain these networks, which we implement in the R packages graphicalVAR and mlVAR. The methods are showcased in two empirical examples, and simulation studies on these methods are included in the supplementary materials.
引用
收藏
页码:453 / 480
页数:28
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