Influence.ME now supports sampling weights

December 18, 2014
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(This article was first published on Curving Normality » R-Project, and kindly contributed to R-bloggers)

Influence.ME is an R package that helps detecting influential cases in multilevel regression models. It has been around for a while now, and recent changes in lme4 broke the functionality of using influence.ME with sampling weights.

Thanks to a kind contribution of some code by user Jennifer Bufford, influence.ME now should work with multilevel models with sampling weights (and offsets). Version 0.9-5 is now available on CRAN servers around the world.

For more details on influence.ME, see: http://www.rensenieuwenhuis.nl/r-project/influenceme/

To leave a comment for the author, please follow the link and comment on their blog: Curving Normality » R-Project.

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