“…SEM trees as first presented by Brandmaier, Oertzen, McArdle, and Lindenberger (2013), discussed in the methodological literature (Brandmaier, Driver, & Voelkle, 2018;Brandmaier, Prindle, McArdle, & Lindenberger, 2016;Jacobucci, Grimm, & McArdle, 2017;Serang et al, 2020;Usami, Hayes, & McArdle, 2017;Usami, Jacobucci, & Hayes, 2019), and used for data analysis (Ammerman, Jacobucci, & McCloskey, 2019;Brandmaier, Ram, Wagner, & Gerstorf, 2017;Mooij, Henson, Waldorp, & Kievit, 2018;Simpson-Kent et al, 2020) are another popular method for exploring heterogeneity in SEMs that can be considered as a compromise between MGSEMs and latent class models. SEM trees are a data-driven approach that automatically searches through all available covariates to identify groups with similar SEM parameter values.…”