The purpose of PLmixed
is to extend the capabilities of
lme4
to allow factor structures (i.e., factor loadings and
discrimination parameters) to be freely estimated. Thus, factor analysis
and item response theory models with multiple hierarchical levels and/or
crossed random effects can be estimated using code that requires little
more input than that required by lme4
. All of the strengths
of lme4
, including the ability to add (possibly random)
covariates and an arbitrary number of crossed random effects, are
encompassed within PLmixed
. In fact, PLmixed
uses lme4
and optim
to estimate the model
using nested maximizations. Details of this approach can be found in
Jeon and Rabe-Hesketh (2012). A manuscript documenting the use of
PLmixed
is currently in preparation.
PLmixed
can be installed from CRAN with:
install.packages("PLmixed")