multilevelmediation contains functions for computing indirect effects with multilevel models and obtaining confidence intervals for various effects using bootstrapping. The ultimate goal is to support 2-2-1, 2-1-1, and 1-1-1 models, the option of a moderating variable at level 1 or level 2 for either the a, b, or both paths. Currently the 1-1-1 model is supported and several options of random effects are supported; the underlying initial code has been evaluated in simulations (see Falk et al in references). Support for Bayesian estimation and the inclusion of covariates comprises ongoing work. Currently only continuous mediators and outcomes are supported. Factors (e.g., for X) must be numerically represented.
Note that GitHub contains the development version of the package. If you want new, sometimes minimally tested features, install from here.
# From GitHub:
# install.packages("devtools")
::install_github("falkcarl/multilevelmediation") devtools
Otherwise, a release should be available on CRAN:
install.packages("multilevelmediation")
Bauer, D. J., Preacher, K. J., & Gil, K. M. (2006). Conceptualizing and testing random indirect effects and moderated mediation in multilevel models: New procedures and recommendations. Psychological Methods, 11(2), 142–163. https://doi.org/10.1037/1082-989X.11.2.142
Carpenter, J. R., Goldstein, H., & Rasbash, J. (2003). A novel bootstrap procedure for assessing the relationship between class size and achievement. Applied Statistics, 52(4), 431-443.
Falk, C. F., Vogel, T., Hammami, S., & Miočević, M. (in press). Multilevel mediation analysis in R: A comparison of bootstrap and Bayesian approaches. Behavior Research Methods. doi: https://doi.org/10.3758/s13428-023-02079-4 Preprint: https://doi.org/10.31234/osf.io/ync34
Hox, J., & van de Schoot, R. (2013). Robust methods for multilevel analysis. In M. A. Scott, J. S. Simonoff & B. D. Marx (Eds.), The SAGE Handbook of Multilevel Modeling (pp. 387-402). SAGE Publications Ltd. doi: 10.4135/9781446247600.n22
Krull, J. L., & MacKinnon, D. P. (2001). Multilevel modeling of individual and group level mediated effects. Multivariate behavioral research, 36(2), 249-277. doi: 10.1207/S15327906MBR3602_06
van der Leeden, R., Meijer, E., & Busing, F. M. T. A. (2008). Resampling multilevel models. In J. de Leeuw & E. Meijer (Eds.), Handbook of Multilevel Analysis (pp. 401-433). Springer.
lme
(the
function from the nlme
package that fits the models)
supports is available. Pass an argument (to modmed.mlm
or
any of the bootstrapping functions) for na.action
that will
be passed down to the lme
function. For example,
na.action = na.omit
.brms
package. When it is finished an update shall be posted.tibble
as input
brms
glmmTMB
(resid bootstrap still
forthcoming).boot.modmed.mlm.custom
is not
set by default (it’s NULL
).brms
into master. This means that
some support for brms
is provided. Covariates with
brms
are not yet supported and that code could use some
more testing. Also protect against possible bug for
boot.modmed.mlm.custom
.modmed.mlm
. Could support
additional centering and/or missing data handling.boot.modmed.mlm.custom
introduced as a new function to
unify all case bootstrapping and residual bootstrapping methods into one
function and obtain further gains in speed. This reduces reliance on the
boot
package and appears to be a bit faster. Testing is
still in progress, though this function may soon replace
boot.modmed.mlm
.modmed.mlm
and boot.modmed.mlm
. Pass an argument for
na.action
that will be passed down to the lme
function. For example, na.action = na.omit
.