Examination of Nonlinear Longitudinal Processes with Latent Variables, Latent Processes, Latent Changes, and Latent Classes in the Structural Equation Modeling Framework: The R package nlpsem
Jin Liu

TL;DR
The nlpsem R package offers a comprehensive toolkit for modeling complex nonlinear longitudinal processes with latent variables, classes, and mixture models within the SEM framework, supporting flexible analysis and robust estimation.
Contribution
This paper introduces the nlpsem package, enabling advanced nonlinear longitudinal SEM analyses with features like mixture models, covariates, and efficient estimation methods, which were not previously available in a single toolkit.
Findings
Supports univariate and multivariate longitudinal models
Includes tools for goodness-of-fit, clustering, and visualization
Facilitates model comparison using multiple criteria
Abstract
We introduce the R package nlpsem, a comprehensive toolkit for analyzing longitudinal processes within the structural equation modeling (SEM) framework, incorporating individual measurement occasions. This package emphasizes nonlinear longitudinal models, especially intrinsic ones, across four key scenarios: (1) univariate longitudinal processes with latent variables, optionally including covariates such as time-invariant covariates (TICs) and time-varying covariates (TVCs); (2) multivariate longitudinal analyses to explore correlations or unidirectional relationships between longitudinal variables; (3) multiple-group frameworks for comparing manifest classes in scenarios (1) and (2); and (4) mixture models for scenarios (1) and (2), accommodating latent class heterogeneity. Built on the OpenMx R package, nlpsem supports flexible model designs and uses the full information maximum…
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Taxonomy
TopicsMental Health Research Topics
