Seeing the impossible: Visualizing latent variable models with flexplavaan

Psychol Methods. 2023 Dec;28(6):1456-1477. doi: 10.1037/met0000468. Epub 2022 Jan 27.

Abstract

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 must 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).

MeSH terms

  • Humans
  • Latent Class Analysis
  • Models, Theoretical*