Estimated marginal means (EMMs, previously known as least-squares means in the context of traditional regression models) are derived by using a model to make predictions over a regular grid of predictor combinations (called a reference grid). These predictions may possibly be averaged (typically with equal weights) over one or more of the predictors. Such marginally-averaged predictions are useful for describing the results of fitting a model, particularly in presenting the effects of factors. The emmeans package can easily produce these results, as well as various graphs of them (interaction-style plots and side-by-side intervals).
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Estimation and testing of pairwise comparisons of EMMs, and several other types of contrasts, are provided. There is also a
cld
method for display of grouping symbols. -
Two-way support of the
glht
function in the multcomp package. -
For models where continuous predictors interact with factors, the package's
emtrends
function works in terms of a reference grid of predicted slopes of trend lines for each factor combination. -
Vignettes are provided on various aspects of EMMs and using the package. See the CRAN page
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The package incorporates support for many types of models, including standard models fitted using
lm
,glm
, and relatives, various mixed models, GEEs, survival models, count models, ordinal responses, zero-inflated models, and others. Provisions for some models include special modes for accessing different types of predictions; for example, with zero-inflated models, one may opt for the estimated response including zeros, just the linear predictor, or the zero model. For details, seevignette("models", package = "emmeans")
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Various Bayesian models (carBayes, MCMCglmm, MCMCpack) are supported by way of creating a posterior sample of least-squares means or contrasts thereof, which may then be examined using tools such as in the coda package.
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Package developers may provide emmeans support for their models by writing
recover_data
andemm_basis
methods. Seevignette("extending", package = "emmeans")
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CRAN The latest CRAN version may be found at https://CRAN.R-project.org/package=emmeans. Also at that site, formatted versions of this package's vignettes may be viewed.
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Github To install the latest development version from Github, install the newest version (definitely 2.0 or higher) of the devtools package; then run
devtools::install_github("rvlenth/emmeans", dependencies = TRUE, build_opts = "")
### To install without vignettes (faster):
devtools::install_github("rvlenth/emmeans")
Note: If you are a Windows user, you should also first download and
install the latest version of
Rtools
.
For the latest release notes on this development version, see the NEWS file