influence.ME
Tools for Detecting Influential Data in Mixed Effects Models
Provides a collection of tools for detecting influential cases in generalized mixed effects models. It analyses models that were estimated using 'lme4'. The basic rationale behind identifying influential data is that when 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 Cook's Distance. In addition, we provide a measure of percentage change of the fixed point estimates and a simple procedure to detect changing levels of significance.
- Version0.9-9
- R version≥ 2.15.0
- LicenseGPL-3
- Needs compilation?No
- influence.ME citation info
- Last release06/07/2017
Documentation
Team
Rense Nieuwenhuis
Ben Pelzer
Manfred te Grotenhuis
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Dependencies
- Depends1 package
- Imports2 packages