Various information criteria
Calculate Mallows' Cp and Bozdogan's ICOMP and CAIFC information criteria.
Extract or calculate Deviance Information Criterion from MCMCglmm and
merMod object.
Cp(object, ..., dispersion = NULL) ICOMP(object, ..., REML = NULL) CAICF(object, ..., REML = NULL) DIC(object, ...)
object |
a fitted model object (in case of ICOMP and CAICF, |
... |
optionally more fitted model objects. |
dispersion |
the dispersion parameter. If |
REML |
optional logical value, passed to the |
Mallows' Cp statistic is the residual deviance plus twice the estimate of sigma^2 times the residual degrees of freedom. It is closely related to AIC (and a multiple of it if the dispersion is known).
ICOMP (I for informational and COMP for complexity) penalizes the covariance complexity of the model, rather than the number of parameters directly.
CAICF (C is for ‘consistent’ and F denotes the use of the Fisher information matrix) includes with penalty the natural logarithm of the determinant of the estimated Fisher information matrix.
If just one object is provided, the functions return a numeric value with
the corresponding IC; otherwise a data.frame with rows corresponding
to the objects is returned.
Mallows, C. L. (1973) Some comments on Cp. Technometrics 15: 661–675.
Bozdogan, H. and Haughton, D.M.A. (1998) Information complexity criteria for regression models. Comp. Stat. & Data Analysis 28: 51-76.
Anderson, D. R. and Burnham, K. P. (1999) Understanding information criteria for selection among capture-recapture or ring recovery models. Bird Study 46: 14–21.
Spiegelhalter, D.J., Best, N.G., Carlin, B.R., van der Linde, A. (2002) Bayesian measures of model complexity and fit. Journal of the Royal Statistical Society Series B-Statistical Methodology 64: 583–616.
AIC and BIC in stats, AICc.
QIC for GEE model selection.
extractDIC in package arm, on which the (non-visible)
method extractDIC.merMod used by DIC is based.
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