rms (version 4.5-0)

Glm: rms Version of glm

Description

This function saves rms attributes with the fit object so that anova.rms, Predict, etc. can be used just as with ols and other fits. No validate or calibrate methods exist for Glm though.

Usage

Glm(formula, family = gaussian, data = list(), weights = NULL, subset = NULL, na.action = na.delete, start = NULL, offset = NULL, control = glm.control(...), model = TRUE, method = "glm.fit", x = FALSE, y = TRUE, contrasts = NULL, ...)
"print"(x, digits=4, coefs=TRUE, latex=FALSE, title='General Linear Model', ...)

Arguments

formula,family,data,weights,subset,na.action,start,offset,control,model,method,x,y,contrasts
see glm; for print, x is the result of Glm
...
ignored
digits
number of significant digits to print
coefs
specify coefs=FALSE to suppress printing the table of model coefficients, standard errors, etc. Specify coefs=n to print only the first n regression coefficients in the model.
latex
a logical value indicating whether information should be formatted as plain text or as LaTeX markup
title
a character string title to be passed to prModFit

Value

glm but with rms attributes and a class of "rms", "Glm", "glm", and "lm". The g element of the fit object is the $g$-index.

See Also

glm,rms,GiniMd, prModFit,residuals.glm

Examples

Run this code
## Dobson (1990) Page 93: Randomized Controlled Trial :
counts <- c(18,17,15,20,10,20,25,13,12)
outcome <- gl(3,1,9)
treatment <- gl(3,3)
f <- glm(counts ~ outcome + treatment, family=poisson())
f
anova(f)
summary(f)
f <- Glm(counts ~ outcome + treatment, family=poisson())
# could have had rcs( ) etc. if there were continuous predictors
f
anova(f)
summary(f, outcome=c('1','2','3'), treatment=c('1','2','3'))

Run the code above in your browser using DataLab