This is an R-package for fitting linear mixed effects models in a robust manner. The method is based on the robustification of the scoring equations and an application of the Design Adaptive Scale approach.
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Latest commit b319f16 May 30, 2016 @kollerma Version 2.0
Moving towards Rcpp. Added psi_function_module, an Rcpp
implementation of the psi_func class of robustbase.
Removed psi_func_cached class accordingly (still available in tests).
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README.md

Robust linear mixed effects models

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The R-package robustlmm provides functions for estimating linear mixed effects models in a robust way.

The main workhorse is the function rlmer; it is implemented as direct robust analogue of the popular lmer function of the lme4 package. The two functions have similar abilities and limitations. A wide range of data structures can be modeled: mixed effects models with hierarchical as well as complete or partially crossed random effects structures are possible. While the lmer function is optimized to handle large datasets efficiently, the computations employed in the rlmer function are more complex and for this reason also more expensive to compute. The two functions have the same limitations in the support of different random effect and residual error covariance structures. Both support only diagonal and unstructured random effect covariance structures.

The robustlmm package implements most of the analysis tool chain as is customary in R. The usual functions such as summary, coef, resid, etc. are provided as long as they are applicable for this type of models (see rlmerMod-class for a full list). The functions are designed to be as similar as possible to the ones in the lme4 package to make switching between the two packages easy.

Installation

This R-package is available on CRAN. Install it directly in R with the command

install.packages("robustlmm")

This package requires lme4 version at least 1.1 and other packages. Make sure to install them as well.

You can also install the package directly from github:

install.packages("devtools") ## if not already installed
require(devtools)
install_github("robustlmm", "kollerma")
require(robustlmm)