glm(formula, family=gaussian, data, weights, subset, na.action=na.fail, start=NULL, offset=NULL, control=glm.control(epsilon=0.0001, maxit=10, trace=F), model=T, method=glm.fit, x=F, y=T) summary(glm.obj, dispersion=NULL, correlation=TRUE, na.action=na.omit) anova(glm.obj, ...) coefficients(glm.obj) deviance(glm.obj) df.residual(glm.obj) effects(glm.obj) family(glm.obj) fitted.values(glm.obj) residuals(glm.obj, type="deviance") glm.control(epsilon=0.0001, maxit=10, trace=FALSE) glm.fit(x, y, weights=rep(1, nrow(x)), start=NULL, offset=rep(0, nrow(x)), family=gaussian(), control=glm.control(), intercept=TRUE)
formula
| a symbolic description of the model to be fit. The details of model specification are given below. |
family
|
a description of the error distribution and link
function to be used in the model.
See family for details.
|
data
|
an optional data frame containing the variables
in the model. By default the variables are taken from
the environment which lm is called from.
|
weights
| an optional vector of weights to be used in the fitting process. |
subset
| an optional vector specifying a subset of observations to be used in the fitting process. |
na.action
|
a function which indicates what should happen
when the data contain NA s. The default action (na.omit )
is to omit any incomplete observations.
The alternative action na.fail causes lm to
print an error message and terminate if there are any incomplete
observations.
|
start
| starting values for the parameters in the linear predictor. |
offset
| this can be used to specify an a-priori known component to be included in the linear predictor during fitting. |
control
|
a list of parameters for controlling the fitting
process. See the documentation for glm.control for details.
|
model
| a logical value indicating whether model frame should be included as a component of the returned value. |
method
|
the method to be used in fitting the model.
The default (and presently only) method glm.fit
uses iteratively reweighted least squares.
|
x,y
| logical values indicating whether the response vector and design matrix used in the fitting process should be returned as components of the returned value. |
glm.obj
|
an object of class glm .
|
dispersion
|
the dispersion parameter for the fitting family.
By default the dispersion parameter is obtained from
glm.obj .
|
correlation
| should the correlation matrix of the estimated parameters be printed. |
type
|
the type of residuals which should be returned. The alternatives are:
"deviance" , "pearson" , "working" , "response" .
|
glm
is used to fit generalized linear models.
Models for glm
are specified by giving
a symbolic description of the linear predictor and
a description of the error distribution.
A typical predictor has the form
reponse ~ terms
where response
is the (numeric)
response vector and terms
is a series of terms which
specifies a linear predictor for response
.
A terms specification of the form first+second
indicates all the terms in first
together
with all the terms in second
with duplicates
removed.
A specification of the form first:second
indicates the
the set of terms obtained by taking the interactions of
all terms in first
with all terms in second
.
The specification first*second
indicates the cross
of first
and second
.
This is the same as first+second+first:second
.
glm
returns an object of class glm
which inherits from the class lm
.
The function summary
can be used to obtain or print
a summary of the results and the function anova
and be used to produce and analysis of variance table.
The generic accessor functions coefficients
,
effects
, fitted.values
and residuals
can be used to extract various useful features of the
value returned by glm
.
anova
, coefficients
, effects
,
fitted.values
,
lm
,
residuals
, summary
.