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Latent variable models (LVMs) are incredibly flexible tools that allow users to address research questions they might otherwise never be able to answer (McDonald, 2013). However, one major limitation of LVMs is evaluating model fit. There is no universal consensus about how to evaluate model fit, either globally or locally. Part of the reason evaluating these models is difficult is because fit is typically reduced to a handful of statistics that may or may not reflect the model's adequacy and/or assumptions. In this article we argue that proper evaluation of model fit include visualizing both the raw data and the model-implied fit. Visuals reveal, at a glance, the fit of the model and whether the model's assumptions have been met. Unfortunately, tools for visualizing LVMs have historically been limited. In this article, we introduce new plots and reframe existing plots that provide necessary resources for evaluating LVMs. These plots are available in a new open-source R package called flexplavaan, which combines the model plotting capabilities of flexplot with the latent variable modeling capabilities of lavaan. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
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http://dx.doi.org/10.1037/met0000468 | DOI Listing |
Rev Cardiovasc Med
August 2025
Nursing Department, The First Affiliated Hospital of Ningbo University, 315000 Ningbo, Zhejiang, China.
Background: To explore the potential categories of compliance development track of dual antiplatelet therapy (DAPT) after percutaneous coronary intervention (PCI) in patients with acute coronary syndrome (ACS) using growth mixture modeling (GMM) to analyze its predictive factors, providing evidence for dynamic adherence monitoring and tailored interventions.
Methods: A total of 150 patients with ACS after PCI were selected by convenience sampling. Patients were studied using Self-Efficacy for Appropriate Medication Use Scale (SEAMS), family APGAR index (APGAR), Generalized Anxiety Disorder-2 (GAD-2), and Patient Health Questionnaire-2 (PHQ-2) at baseline.
J Public Health Policy
September 2025
Carrera de Medicina, Universidad Nacional de Loja, Av. Pio Jaramillo Alvarado, 110150, Loja, Ecuador.
Poor quality obstetric care can harm women's mental health, especially after childbirth. This study examines how the perceived quality of health services during childbirth is related to postpartum depression in Ecuador. Using data from 16,451 women in the 2018 National Health and Nutrition Survey, we applied probit and latent class probit models.
View Article and Find Full Text PDFJ Environ Manage
September 2025
University of Maryland Center for Environmental Science, Annapolis, MD, USA.
River water quality degradation is a prevailing problem in coastal China with intensifying human-nature interaction. However, the spatial and temporal dynamics of water quality and their drivers remain poorly understood. In this study, we developed an analytical framework integrating self-organizing mapping (SOM) with partial least squares structural equation models (PLS-SEMs) to analyze the patterns and drivers of river water quality at 49 stations from 2021 to 2023 in Fujian Province, a coastal region in southeastern China.
View Article and Find Full Text PDFJ Forensic Leg Med
August 2025
Laboratory of Criminalistics, Adam Mickiewicz University in Poznań, al. Niepodległości 53, Poznań 61-714, Poland; Center for Advanced Technologies, Adam Mickiewicz University in Poznań, ul. Uniwersytetu Poznańskiego 10, Poznań 61-614, Poland.
This study examines the reliability of fingerprint experts in assessing the individualization value of minutiae during the analysis of latent fingerprint traces. Despite the widespread use of fingerprint evidence in criminal investigations, growing concerns about examiner variability and the lack of verification protocols have prompted critical scrutiny of forensic practices. In this study, 30 Polish fingerprint experts were asked to identify and evaluate seven minutiae in two fingerprint traces of differing quality.
View Article and Find Full Text PDFIEEE Trans Cybern
September 2025
To combine the strengths of Gaussian and non-Gaussian latent variable models, a novel information fusion strategy has recently been proposed under the deep learning framework. Although promising results have been obtained, the critical structure learning problem remains unsolved, which seriously hinders the automation of data-driven modeling and analytics. In this article, the maximal information coefficient (MIC) method is introduced as a measurement of the AS between two latent variables, which has no restriction in the type of data distribution.
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