Abstract

In recent years, network analysis has been applied to identify and analyse patterns of statistical association in multivariate psychological data. In these approaches, network nodes represent variables in a data set, and edges represent pairwise conditional associations between variables in the data, while conditioning on the remaining variables. This Primer provides an anatomy of these techniques, describes the current state of the art and discusses open problems. We identify relevant data structures in which network analysis may be applied: cross-sectional data, repeated measures and intensive longitudinal data. We then discuss the estimation of network structures in each of these cases, as well as assessment techniques to evaluate network robustness and replicability. Successful applications of the technique in different research areas are highlighted. Finally, we discuss limitations and challenges for future research.

Keywords

Pairwise comparisonMultivariate statisticsComputer scienceNetwork analysisData miningMultivariate analysisData setData scienceRobustness (evolution)Set (abstract data type)Artificial intelligenceMachine learningEngineering

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Year
2021
Type
article
Volume
1
Issue
1
Citations
1031
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Closed

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Denny Borsboom, Marie K. Deserno, Mijke Rhemtulla et al. (2021). Network analysis of multivariate data in psychological science. Nature Reviews Methods Primers , 1 (1) . https://doi.org/10.1038/s43586-021-00055-w

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DOI
10.1038/s43586-021-00055-w