seq_loglm(x,
type = c("joint", "conditional", "mutual", "markov", "saturated"),
marginals = 1:nf, vorder = 1:nf,
k = NULL, prefix = "model", fitted = TRUE, ...)
"Freq"
."joint"
, "conditional"
, "mutual"
, "markov"
,
or "saturated"
.1:nf
where nf
is the number of factors in the full n-way table.1:nf
,
used to reorder the variables in the original table for the purpose
of fitting sequential marginal models.type
= "joint"
, "conditional"
or Markov chain order for type
= "markov"
loglm
to store the fitted values in the
model objects"loglmlist"
, each of which is a class "loglm"
objectchisq.test
) and add
successive variables one at a time in the order specified by
vorder
.
All model types give the same result for the two-way margin,
namely the test of independence for the first two factors.
Sequential models of joint independence (type="joint"
)
have a particularly simple interpretation, because they
decompose the likelihood ratio test for the model of
mutual independence in the full n-way table, and hence
account for "total" association in terms of portions attributable
to the conditional probabilities of each new variable,
given all prior variables.loglin-utilities
for descriptions of sequential models,
conditional
,
joint
,
mutual
, ...loglmlist
,data(Titanic, package="datasets")
# variables are in the order Class, Sex, Age, Survived
tt <- seq_loglm(Titanic)
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