I am using the 'MuMIn' package in R to select models and calculate effect sizes of the input variables (rain, brk, onset, wid). To make my effect size comparable between variables, I standardised them using standardize function in
arm package. Here is the code that I am following:
For reference, please refer to the appendix of this paper: http://onlinelibrary.wiley.com/doi/10.1111/j.1420-9101.2010.02210.x/full Grueber et al. 2011: Multimodel inference in ecology and evolution: challenges and solutions
data1<-read.csv("data.csv",header=TRUE) #reads the data global.model<-lmer(yld.res ~ rain + brk + onset + wid + (1|state),data=data1,REML="FALSE") # prepares a global model stdz.model <- standardize(global.model,standardize.y = FALSE) # standardise the input varaibles model.set <- dredge(stdz.model) ### generates the full submodel set top.models <- get.models(model.set, subset= delta<2) # selects models with delta AIC <2 model.avg(top.models) # calculates the average effect size of input variables
Here is the result of
model.avg(top.models) which gives the average effect size of each input variable
Coefficients: (Intercept) brk rain wid onset subset -4.281975e-14 -106.0919 51.54688 39.82837 35.68766
I read around how the standardize function works- subtracts mean and divides by 2SD.
My question is this: Since I have standardised the input variables, should not the effect sizes be between -1 to 1? or the effect size which the output shows is correct?
Thanks a lot