Discovering Psychological Dynamics in Time-Series Data
arXiv (Cornell University)
Article 2016 English
Authors
SE
Sacha Epskamp
LW
Lourens Waldorp
RM
René Mõttus
Abstract
1 min read
This paper provides a methodological overview of statistical network models
in cross-sectional and time-series data. The increasing trend of modeling
psychological data through networks attempts to highlight potential causal
relationships between observed variables. When data are cross-sectional, it is
becoming increasingly popular to estimate a Gaussian graphical model (GGM; a
network of partial correlation coefficients). In a time-series analysis,
networks are typically constructed through the use of (multilevel) vector
autoregression (VAR). VAR estimates a directed network that encodes temporal
predictive effects - the temporal network. We show that GGM and VAR models are
closely related: VAR generalizes the GGM by taking violations of independence
between consecutive cases into account. VAR analyses can also return a GGM that
encodes relationships within the same window of measurement - the
contemporaneous network, which has not yet been extensively utilized in the
literature. When multiple subjects are measured, multilevel VAR estimates fixed
and random temporal networks. Proper centering can disentangle within- and
between-subject variance in such processes. We show, for the first time, that
the between-subject effects can be summarized in a GGM network - the
between-subjects network. We argue that such between-subjects effects can also
indicate causal pathways. Furthermore, we propose a novel two-step, multilevel
estimation procedure to obtain fixed and random effects for contemporaneous
network structures. We have implemented this procedure in the R package mlVAR.
We present a simulation study to show the performance of mlVAR and to showcase
the method in an empirical example on personality inventory items and physical
exercise.
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