glmm.hp: an R package for computing individual effect of predictors in generalized linear mixed models
Nanjing Forestry University · Xi’an Jiaotong-Liverpool University · +4 more institutions
Abstract
Abstract Generalized linear mixed models (GLMMs) have been widely used in contemporary ecology studies. However, determination of the relative importance of collinear predictors (i.e. fixed effects) to response variables is one of the challenges in GLMMs. Here, we developed a novel R package, glmm.hp, to decompose marginal R2 explained by fixed effects in GLMMs. The algorithm of glmm.hp is based on the recently proposed approach ‘average shared variance’ i.e. used for multivariate analysis. We explained the principle and demonstrated the use of this package by simulated dataset. The output of glmm.hp shows individual marginal R2s that can be used to evaluate the relative importance of predictors, which sums up…
Citation impact
- FWCI
- 106.00
- Percentile
- 100%
- References
- 23
Authors
5- JLJiangshan LaiCorresponding
Nanjing Forestry University
- YZYi Zou
Xi’an Jiaotong-Liverpool University
- SZShuang Zhang
Chinese Academy of Sciences, Research Center for Eco-Environmental Sciences
- XZXiaoguang Zhang
Chinese Academy of Sciences, Institute of Hydrobiology, University of Chinese Academy of Sciences
- LMLingfeng Mao
Nanjing Forestry University
Topics & keywords
- Generalized linear mixed model
- Multivariate statistics
- Mixed model
- Mathematics
- R package
- Statistics
- Econometrics
- Applied mathematics
- Life in Land