glm.object
Generalized Linear Model Object

Description

Classes of objects returned by fitting generalized linear model objects.
Value

coefficients the coefficients of the linear.predictors, which multiply the columns of the model matrix. The names of the coefficients are the names of the single-degree-of-freedom effects (the columns of the model matrix). If the model is over-determined there will be missing values in the coefficients corresponding to inestimable coefficients.
linear.predictors the linear fit, given by the product of the model matrix and the coefficients; also the fitted.values from the final weighted least squares fit.
fitted.values the fitted mean values, obtained by transforming linear.predictors using the inverse link function.
residuals the residuals from the final weighted least squares fit; also known as workingresiduals, these are typically not interpretable without rescaling by the weights.
deviance up to a constant, minus twice the maximized log-likelihood. Similar to the residual sum of squares.
null.deviance the deviance corresponding to the model with no predictors.
iter the number of IRLS iterations used to compute the estimates.
family a 2 element character vector giving the name of the family, the link function; mainly for printing purposes.
weights the iterative weights from the final IRLS fit
aic aic value computed by component aic of family function.
prior.weights initial weights.
df.null the number of degrees of freedom for null model.
converged logical value if IRLS fit has converged.
boundary logical value if fitted value on the boundary.
data data frame, list or environment contains the model varaible.
offset the value of argument offset used.
control the value of argument control used.
method the method name used for fit.
na.action the na.action attribute of model.frame to handle missing values (NAs).
xlevels the levels of factor used in fit.
The object will also have the components of an lm object: coefficients, residuals, fitted.values, call, terms, effects, R, rank, assign, contrasts, df.residual R.assign, assign.residuals, qr, model, x and y. See lm.object for more details.
Generation
This class of objects is returned by the glm function to represent a fitted generalized linear model. Class glm inherits from class lm, since it is fit by iterative reweighted least squares; the object returned has all the components of a weighted least squares object.
Methods
Objects of this class have methods for the functions print, plot, summary, anova, predict, fitted, drop1, add1, amongst others.
Structure
The following components must be included in a legitimate glm object. The residuals, fitted values, coefficients and effects should be extracted by the generic functions of the same name, rather than by the "\$" operator. The family function returns the entire family object used in the fitting, and deviance can be used to extract the deviance of the fit.
See Also
glm, lm.object.
Package stats version 6.1.4-13
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