REMLA - Robust Expectation-Maximization Estimation for Latent Variable
Models
Traditional latent variable models assume that the
population is homogeneous, meaning that all individuals in the
population are assumed to have the same latent structure.
However, this assumption is often violated in practice given
that individuals may differ in their age, gender, socioeconomic
status, and other factors that can affect their latent
structure. The robust expectation maximization (REM) algorithm
is a statistical method for estimating the parameters of a
latent variable model in the presence of population
heterogeneity as recommended by Nieser & Cochran (2023)
<doi:10.1037/met0000413>. The REM algorithm is based on the
expectation-maximization (EM) algorithm, but it allows for the
case when all the data are generated by the assumed data
generating model.