Generalized Estimating Equation for Poisson Regression
a symbolic representation of the model to be
estimated, in the form y ~ x1 + x2
, where y
is the
dependent variable and x1
and x2
are the explanatory
variables, and y
, x1
, and x2
are contained in the
same dataset. (You may include more than two explanatory variables,
of course.) The +
symbol means ``inclusion'' not
``addition.'' You may also include interaction terms and main
effects in the form x1*x2
without computing them in prior
steps; I(x1*x2)
to include only the interaction term and
exclude the main effects; and quadratic terms in the form
I(x1^2)
.
the name of a statistical model to estimate. For a list of other supported models and their documentation see: http://docs.zeligproject.org/articles/.
the name of a data frame containing the variables
referenced in the formula or a list of multiply imputed data frames
each having the same variable names and row numbers (created by
Amelia
or to_zelig_mi
).
additional arguments passed to zelig
,
relevant for the model to be estimated.
a factor variable contained in data
. If supplied,
zelig
will subset
the data frame based on the levels in the by
variable, and
estimate a model for each subset. This can save a considerable amount of
effort. You may also use by
to run models using MatchIt
subclasses.
If is set to 'TRUE' (default), the model citation will be printed to the console.
where id is a variable which identifies the clusters. The data should be sorted by id and should be ordered within each cluster when appropriate
character string specifying the correlation structure: "independence", "exchangeable", "ar1", "unstructured" and "userdefined"
See geeglm in package geepack for other function arguments
Depending on the class of model selected, zelig
will return
an object with elements including coefficients
, residuals
,
and formula
which may be summarized using
summary(z.out)
or individually extracted using, for example,
coef(z.out)
. See
http://docs.zeligproject.org/articles/getters.html for a list of
functions to extract model components. You can also extract whole fitted
model objects using from_zelig_model
.
Additional parameters avaialable to this model include:
weights
: vector of weight values or a name of a variable in the dataset
by which to weight the model. For more information see:
http://docs.zeligproject.org/articles/weights.html.
bootstrap
: logical or numeric. If FALSE
don't use bootstraps to
robustly estimate uncertainty around model parameters due to sampling error.
If an integer is supplied, the number of boostraps to run.
For more information see:
http://docs.zeligproject.org/articles/bootstraps.html.
Vignette: http://docs.zeligproject.org/articles/zelig_poissongee.html
# NOT RUN {
library(Zelig)
data(sanction)
sanction$cluster <- c(rep(c(1:15), 5), rep(c(16), 3))
sorted.sanction <- sanction[order(sanction$cluster),]
z.out <- zelig(num ~ target + coop, model = "poisson.gee",id = "cluster", data = sorted.sanction)
summary(z.out)
# }
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