fwdglm(formula, family, data, weights, na.action, contrasts = NULL, bsb = NULL, balanced = TRUE, maxit = 50, epsilon = 1e-06, nsamp = 100, trace = TRUE)
family
for details.NA
's. The default is set by the na.action
setting of options
, and is na.fail
if that is unset. The default is na.omit
.contrasts.arg
of model.matrix.default
."best"
starting subset is chosen using the function lmsglm
with control arguments provided by nsamp
.TRUE
the proportion of successes on the full dataset is approximately balanced during the forward search algorithm.glm.control
for details.glm.control
for details.lmsglm
. This argument allows to control how many subsets are used in the robust fitting procedure. The choices are: the number of samples (100 by the default) or "all"
. Note that the algorithm tries to find nsamp
good subsets or a maximum of 2*nsamp
subsets.TRUE
a message is printed for every ten iterations completed during the forward search."fwdglm"
with the following components:
lmsglm
.TRUE
if binary response.summary.fwdglm
, plot.fwdglm
, fwdlm
, fwdsco
.
data(cellular)
cellular$TNF <- as.factor(cellular$TNF)
cellular$IFN <- as.factor(cellular$IFN)
mod <- fwdglm(y ~ TNF + IFN, data=cellular, family=poisson(log), nsamp=200)
summary(mod)
## Not run: plot(mod)
plot(mod, 1)
plot(mod, 5)
plot(mod, 6, ylim=c(-3, 20))
plot(mod, 7)
plot(mod, 8)
Run the code above in your browser using DataLab