predict.zeroinfl {ModTools} | R Documentation |
Methods for zeroinfl Objects
Description
Methods for extracting information from fitted zero-inflated
regression model objects of class "zeroinfl"
.
Usage
## S3 method for class 'zeroinfl'
predict(object, newdata,
type = c("response", "prob", "count", "zero"), na.action = na.pass,
at = NULL, ...)
## S3 method for class 'zeroinfl'
residuals(object, type = c("pearson", "response"), ...)
## S3 method for class 'zeroinfl'
coef(object, model = c("full", "count", "zero"), ...)
## S3 method for class 'zeroinfl'
vcov(object, model = c("full", "count", "zero"), ...)
## S3 method for class 'zeroinfl'
terms(x, model = c("count", "zero"), ...)
## S3 method for class 'zeroinfl'
model.matrix(object, model = c("count", "zero"), ...)
Arguments
object , x |
an object of class |
newdata |
optionally, a data frame in which to look for variables with which to predict. If omitted, the original observations are used. |
type |
character specifying the type of predictions or residuals, respectively. For details see below. |
na.action |
function determining what should be done with missing values
in |
at |
optionally, if |
model |
character specifying for which component of the model the terms or model matrix should be extracted. |
... |
currently not used. |
Details
A set of standard extractor functions for fitted model objects is available for
objects of class "zeroinfl"
, including methods to the generic functions
print
and summary
which print the estimated
coefficients along with some further information. The summary
in particular
supplies partial Wald tests based on the coefficients and the covariance matrix
(estimated from the Hessian in the numerical optimization of the log-likelihood).
As usual, the summary
method returns an object of class "summary.zeroinfl"
containing the relevant summary statistics which can subsequently be printed
using the associated print
method.
The methods for coef
and vcov
by default
return a single vector of coefficients and their associated covariance matrix,
respectively, i.e., all coefficients are concatenated. By setting the model
argument, the estimates for the corresponding model components can be extracted.
Both the fitted
and predict
methods can
compute fitted responses. The latter additionally provides the predicted density
(i.e., probabilities for the observed counts), the predicted mean from the count
component (without zero inflation) and the predicted probability for the zero
component. The residuals
method can compute
raw residuals (observed - fitted) and Pearson residuals (raw residuals scaled by
square root of variance function).
The terms
and model.matrix
extractors can
be used to extract the relevant information for either component of the model.
A logLik
method is provided, hence AIC
can be called to compute information criteria.
Author(s)
Achim Zeileis <Achim.Zeileis@R-project.org>
See Also
Examples
data("bioChemists", package = "ModTools")
fm_zip <- zeroinfl(art ~ ., data = bioChemists)
plot(residuals(fm_zip) ~ fitted(fm_zip))
coef(fm_zip)
coef(fm_zip, model = "count")
summary(fm_zip)
logLik(fm_zip)