Akaike Information Criteria
Extracts the Akaike information criterion (AIC) and the corrected AIC (AICc) from fitted models of formal class “glimML” and possibly computes derived statistics.
## S4 method for signature 'glimML' AIC(object, ..., k = 2)
object |
fitted model of formal class “glimML” (functions |
... |
optional list of fitted models separated by commas. |
k |
numeric scalar, with a default value set to 2, thus providing the regular AIC. |
-2 * log-likelihood + 2 * npar, where npar
represents the number of parameters in the fitted model.
AICc = AIC + 2 * npar * (npar + 1) / (nobs - npar + 1),
where nobs is the number of observations used to compute the log-likelihood. It should be used when the number
of fitted parameters is large compared to sample size, i.e., when nobs / npar < 40 (Hurvich and Tsai, 1995).
Extracts the AIC and AICc from models of formal class “glimML”, fitted by functions
betabin
and negbin
.
Burnham, K.P., Anderson, D.R., 2002. Model selection and multimodel inference: a practical
information-theoretic approach. New-York, Springer-Verlag, 496 p.
Hurvich, C.M., Tsai, C.-L., 1995. Model selection for extended quasi-likelihood models in small samples.
Biometrics, 51 (3): 1077-1084.
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