Computes the (generalized) Akaike An Information Criterion for a fitted parametric model.
extractAIC(fit, scale, k = 2, …)fitted model, usually the result of a fitter like
    lm.
optional numeric specifying the scale parameter of the
   model, see scale in step.  Currently only used
   in the "lm" method, where scale specifies the estimate
   of the error variance, and scale = 0 indicates that it is to
   be estimated by maximum likelihood.
numeric specifying the ‘weight’ of the
   equivalent degrees of freedom (\(\equiv\) edf)
   part in the AIC formula.
further arguments (currently unused in base R).
A numeric vector of length 2, with first and second elements giving
the ‘equivalent degrees of freedom’
    for the fitted model fit.
the (generalized) Akaike Information Criterion for fit.
This is a generic function, with methods in base R for classes
  "aov", "glm" and "lm" as well as for
  "negbin" (package MASS) and "coxph" and
  "survreg" (package survival).
The criterion used is
  $$AIC = - 2\log L +  k \times \mbox{edf},$$
  where \(L\) is the likelihood and edf the equivalent degrees
  of freedom (i.e., the number of free parameters for usual parametric
  models) of fit.
For linear models with unknown scale (i.e., for lm and
  aov), \(-2\log L\) is computed from the
  deviance and uses a different additive constant to
  logLik and hence AIC.  If \(RSS\)
  denotes the (weighted) residual sum of squares then extractAIC
  uses for \(- 2\log L\) the formulae \(RSS/s - n\) (corresponding
  to Mallows' \(C_p\)) in the case of known scale \(s\) and
  \(n \log (RSS/n)\) for unknown scale.
  AIC only handles unknown scale and uses the formula
  \(n \log (RSS/n) + n + n \log 2\pi - \sum \log w\)
  where \(w\) are the weights.  Further AIC counts the scale
  estimation as a parameter in the edf and extractAIC does not.
For glm fits the family's aic() function is used to
  compute the AIC: see the note under logLik about the
  assumptions this makes.
k = 2 corresponds to the traditional AIC, using k =
    log(n) provides the BIC (Bayesian IC) instead.
Note that the methods for this function may differ in their
  assumptions from those of methods for AIC (usually
  via a method for logLik).  We have already
  mentioned the case of "lm" models with estimated scale, and
  there are similar issues in the "glm" and "negbin"
  methods where the dispersion parameter may or may not be taken as
  ‘free’.  This is immaterial as extractAIC is only used
  to compare models of the same class (where only differences in AIC
  values are considered).
Venables, W. N. and Ripley, B. D. (2002) Modern Applied Statistics with S. New York: Springer (4th ed).
# NOT RUN {
utils::example(glm)
extractAIC(glm.D93)  #>>  5  15.129
# }
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