A modified approach to fitting relative importance networks.
Author(s) -
Michael J. Brusco,
Ashley L. Watts,
Douglas Steinley
Publication year - 2022
Publication title -
psychological methods
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.981
H-Index - 151
eISSN - 1939-1463
pISSN - 1082-989X
DOI - 10.1037/met0000496
Subject(s) - regression , generalization , computer science , item response theory , logistic regression , psychometrics , enhanced data rates for gsm evolution , statistics , machine learning , econometrics , artificial intelligence , mathematics , data mining , mathematical analysis
Most researchers have estimated the edge weights for relative importance networks using a well-established measure of general dominance for multiple regression. This approach has several desirable properties including edge weights that represen R ² contributions, in-degree centralities that correspond to R ² for each item when using other items as predictors, and strong replicability. We endorse the continued use of relative importance networks and believe they have a valuable role in network psychometrics. However, to improve their utility, we introduce a modified approach that uses best-subsets regression as a preceding step to select an appropriate subset of predictors for each item. The benefits of this modification include: (a) computation time savings that can enable larger relative importance networks to be estimated, (b) a principled approach to edge selection that can significantly improve specificity, (c) the provision of a signed network if desired, (d) the potential use of the best-subsets regression approach for estimating Gaussian graphical models, and (e) possible generalization to best-subsets logistic regression for Ising models. We describe, evaluate, and demonstrate the proposed approach and discuss its strengths and limitations. (PsycInfo Database Record (c) 2022 APA, all rights reserved).
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