TL;DR
This tutorial introduces methods for assessing the accuracy and stability of psychological networks, emphasizing bootstrap techniques and new statistical tools, supported by simulation studies and a practical R package implementation.
Contribution
It presents novel bootstrap-based methods for evaluating network accuracy and stability, along with an R package, advancing the reliability assessment of psychological network analysis.
Findings
Bootstrap routines effectively assess network connection accuracy.
Correlation stability coefficient quantifies centrality stability.
Bootstrapped difference tests compare network estimates.
Abstract
The usage of psychological networks that conceptualize psychological behavior as a complex interplay of psychological and other components has gained increasing popularity in various fields of psychology. While prior publications have tackled the topics of estimating and interpreting such networks, little work has been conducted to check how accurate (i.e., prone to sampling variation) networks are estimated, and how stable (i.e., interpretation remains similar with less observations) inferences from the network structure (such as centrality indices) are. In this tutorial paper, we aim to introduce the reader to this field and tackle the problem of accuracy under sampling variation. We first introduce the current state-of-the-art of network estimation. Second, we provide a rationale why researchers should investigate the accuracy of psychological networks. Third, we describe how…
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