AICf: Calculate AIC, Akaike's Information Criterion
Description
This function calculate AIC criterion given a vector of observation, a vector of prediction and number of parameter.
Note that number of parameters should include variance.
AICcomplete is the same calculation of the AIC function of R (AICcomplete = n*log(RSS/n)+n+n*log(2*pi)+2*p, with p including variance).
AICshort is the calculation described in chapter 6 Working with crop model (AICshort =n*log(RSS/n)+2*p, with p including variance).
difference between AICcomplete and AICshort is AICcomplete-AICshort=n+n*log(2*pi)
As you use AIC to compare models (with different number of parameters) on a same data (with same n, number of observation), you can use AICshort or AICcomplete.
Usage
AICf(Yobs, Ypred, npar)
Arguments
Yobs
: observed values
Ypred
: prediction values from the model
npar
: number of parameters (should include variance that count for one supplementary parameter)