| seq_loglm | R Documentation |
This function takes an n-way contingency table and fits a series of sequential models to the 1-, 2-, ... n-way marginal tables, corresponding to a variety of types of loglinear models.
seq_loglm(
x,
type = c("joint", "conditional", "mutual", "markov", "saturated"),
marginals = 1:nf,
vorder = 1:nf,
k = NULL,
prefix = "model",
fitted = TRUE,
...
)
x |
a contingency table in array form, with optional category labels specified in the dimnames(x) attribute,
or else a data.frame in frequency form, with the frequency variable named |
type |
type of sequential model to fit, a character string. One of |
marginals |
which marginal sub-tables to fit? A vector of a (sub)set of the integers, |
vorder |
order of variables, a permutation of the integers |
k |
conditioning variable(s) for |
prefix |
prefix used to give names to the sequential models |
fitted |
argument passed to |
... |
other arguments, passed down |
Sequential marginal models for an n-way tables begin with the model of
equal-probability for the one-way margin (equivalent to a
chisq.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.
An object of class "loglmlist", each of which is a class "loglm" object
One-way marginal tables are a bit of a problem here, because they
cannot be fit directly using loglm. The present version
uses loglin, and repairs the result to look like a
loglm object (sort of).
Michael Friendly
These functions were inspired by the original SAS implementation of mosaic displays, described in the User's Guide, http://www.datavis.ca/mosaics/mosaics.pdf
loglin-utilities for descriptions of sequential
models, conditional, joint,
mutual, ...
loglmlist
Other loglinear models:
glmlist(),
joint()
data(Titanic, package="datasets")
# variables are in the order Class, Sex, Age, Survived
tt <- seq_loglm(Titanic)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.