Literature DB >> 27918182

Theory-guided exploration with structural equation model forests.

Andreas M Brandmaier1, John J Prindle1, John J McArdle2, Ulman Lindenberger1.   

Abstract

Structural equation model (SEM) trees, a combination of SEMs and decision trees, have been proposed as a data-analytic tool for theory-guided exploration of empirical data. With respect to a hypothesized model of multivariate outcomes, such trees recursively find subgroups with similar patterns of observed data. SEM trees allow for the automatic selection of variables that predict differences across individuals in specific theoretical models, for instance, differences in latent factor profiles or developmental trajectories. However, SEM trees are unstable when small variations in the data can result in different trees. As a remedy, SEM forests, which are ensembles of SEM trees based on resamplings of the original dataset, provide increased stability. Because large forests are less suitable for visual inspection and interpretation, aggregate measures provide researchers with hints on how to improve their models: (a) variable importance is based on random permutations of the out-of-bag (OOB) samples of the individual trees and quantifies, for each variable, the average reduction of uncertainty about the model-predicted distribution; and (b) case proximity enables researchers to perform clustering and outlier detection. We provide an overview of SEM forests and illustrate their utility in the context of cross-sectional factor models of intelligence and episodic memory. We discuss benefits and limitations, and provide advice on how and when to use SEM trees and forests in future research. (PsycINFO Database Record (c) 2016 APA, all rights reserved).

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Mesh:

Year:  2016        PMID: 27918182     DOI: 10.1037/met0000090

Source DB:  PubMed          Journal:  Psychol Methods        ISSN: 1082-989X


  14 in total

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3.  A Practical Guide to Variable Selection in Structural Equation Models with Regularized MIMIC Models.

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4.  Age Differentiation within Gray Matter, White Matter, and between Memory and White Matter in an Adult Life Span Cohort.

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Review 5.  Developmental cognitive neuroscience using latent change score models: A tutorial and applications.

Authors:  Rogier A Kievit; Andreas M Brandmaier; Gabriel Ziegler; Anne-Laura van Harmelen; Susanne M M de Mooij; Michael Moutoussis; Ian M Goodyer; Ed Bullmore; Peter B Jones; Peter Fonagy; Ulman Lindenberger; Raymond J Dolan
Journal:  Dev Cogn Neurosci       Date:  2017-11-22       Impact factor: 5.811

6.  Greater lifestyle engagement is associated with better age-adjusted cognitive abilities.

Authors:  G Sophia Borgeest; Richard N Henson; Meredith Shafto; David Samu; Rogier A Kievit
Journal:  PLoS One       Date:  2020-05-21       Impact factor: 3.240

7.  Neurocognitive reorganization between crystallized intelligence, fluid intelligence and white matter microstructure in two age-heterogeneous developmental cohorts.

Authors:  Ivan L Simpson-Kent; Delia Fuhrmann; Joe Bathelt; Jascha Achterberg; Gesa Sophia Borgeest; Rogier A Kievit
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8.  Score-Guided Structural Equation Model Trees.

Authors:  Manuel Arnold; Manuel C Voelkle; Andreas M Brandmaier
Journal:  Front Psychol       Date:  2021-01-28

9.  Predicting Students' Attitudes Toward Collaboration: Evidence From Structural Equation Model Trees and Forests.

Authors:  Jialing Li; Minqiang Zhang; Yixing Li; Feifei Huang; Wei Shao
Journal:  Front Psychol       Date:  2021-03-26

10.  Gaussian Process Panel Modeling-Machine Learning Inspired Analysis of Longitudinal Panel Data.

Authors:  Julian D Karch; Andreas M Brandmaier; Manuel C Voelkle
Journal:  Front Psychol       Date:  2020-03-19
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