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"ddfMLR"
class.S3 methods for extracting log-likelihood, Akaike's
information criterion (AIC) and Schwarz's Bayesian criterion
(BIC) for an object of "ddfMLR"
class.
# S3 method for ddfMLR
logLik(object, item = "all", ...)# S3 method for ddfMLR
AIC(object, item = "all", ...)
# S3 method for ddfMLR
BIC(object, item = "all", ...)
an object of "ddfMLR"
class.
numeric or character: either character "all"
to
apply for all converged items (default), or a vector of item
names (column names of Data
), or item identifiers
(integers specifying the column number).
other generic parameters for S3 methods.
Adela Hladka (nee Drabinova)
Institute of Computer Science of the Czech Academy of Sciences
Faculty of Mathematics and Physics, Charles University
hladka@cs.cas.cz
Patricia Martinkova
Institute of Computer Science of the Czech Academy of Sciences
martinkova@cs.cas.cz
if (FALSE) {
# loading data
data(GMATtest, GMATkey)
Data <- GMATtest[, 1:20] # items
group <- GMATtest[, "group"] # group membership variable
key <- GMATkey # correct answers
# testing both DDF effects
(x <- ddfMLR(Data, group, focal.name = 1, key))
# AIC, BIC, log-likelihood
AIC(x)
BIC(x)
logLik(x)
# AIC, BIC, log-likelihood for the first item
AIC(x, item = 1)
BIC(x, item = 1)
logLik(x, item = 1)
}
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