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MuMIn (version 1.40.0)

Multi-Model Inference

Description

Model selection and model averaging based on information criteria (AICc and alike).

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Version

Install

install.packages('MuMIn')

Monthly Downloads

16,288

Version

1.40.0

License

GPL-2

Maintainer

Kamil Barto

Last Published

October 2nd, 2017

Functions in MuMIn (1.40.0)

bootWeights

Bootstrap model weights
cos2Weights

Cos-squared model weights
AICc

Second-order Akaike Information Criterion
BGWeights

Bates-Granger model weights
Information criteria

Various information criteria
MuMIn-package

Multi-model inference
QAIC

Quasi AIC or AICc
QIC

QIC and quasi-Likelihood for GEE
Weights

Akaike weights
arm.glm

Adaptive Regression by Mixing
Beetle

Flour beetle mortality data
exprApply

Apply a function to calls inside an expression
loo

Leave-one-out cross-validation
GPA

Grade Point Average data
dredge

Automated model selection
model.avg

Model averaging
model.sel

model selection table
stdize

Standardize data
subset.model.selection

Subsetting model selection table
Cement

Cement hardening data
merge.model.selection

Combine model selection tables
Model utilities

Model utility functions
stackingWeights

Stacking model weights
std.coef

Standardized model coefficients
get.models

Retrieve models from selection table
model.selection.object

Description of Model Selection Objects
nested

Identify nested models
importance

Relative variable importance
jackknifeWeights

Jackknifed model weights
plot.model.selection

Visualize model selection table
predict.averaging

Predict method for averaged models
MuMIn-models

List of supported models
updateable

Make a function return updateable result
Formula manipulation

Manipulate model formulas
par.avg

Parameter averaging
pdredge

Automated model selection using parallel computation
r.squaredGLMM

Pseudo-R-squared for Generalized Mixed-Effect models
r.squaredLR

Likelihood-ratio based pseudo-R-squared