influence.ME: Tools for detecting influential data in mixed effects models
influence.ME provides a collection of tools for
calculating measures of influential data for generalized mixed
effects models. It analyses models that were estimated using
lme4. The basic rationale behind identifying influential data
is that when iteratively single units are omitted from the
data, models based on these data should not produce
substantially different estimates. To standardize the
assessment of how influential a (single group of)
observation(s) is, several measures of influence are common
practice, such as DFBETAS and Cooks' Distance. In addition, we
provide a measure of percentage change of the fixed point
estimates and a simple test to detect changing levels of
significance.
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