
"model.selection"
table, optionally using parallel computation in a
cluster.get.models(object, subset, cluster = NA, ...)
dredge
."cluster"
object. If it is a valid
cluster, models are evaluated using parallel computation.lme
one may want to use method = "REML"
while using "ML"
for model selection.list
of fitted model objects.subset
must be explicitely provided. This is to assure that
a potentially long list of models is not fitted unintentionally. To evaluate all
models, set subset
to NA
or TRUE
. If subset
is a character vector, it is interpreted as names of rows to be
selected.
dredge
and pdredge
, model.avg
makeCluster
in packages
# Mixed models:
if(require(nlme)) {
fm2 <- lme(distance ~ age + Sex, data = Orthodont,
random = ~ 1 | Subject, method = "ML")
ms2 <- dredge(fm2)
# Get top-most models, but fitted by REML:
(confset.d4 <- get.models(ms2, subset = delta < 4, method = "REML"))
# Get the top model:
get.models(ms2, subset = 1)[[1]]
}
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