I have a
rda file that has a logistic regression model in it. Keeping other things aside if I only want to know what are the data types for the independent variables used in the
glm how can I check those? For example if my
Y~ X1+X2+X3 how do I know what data types the
X3 are? At this point I do not have the data frame to investigate the data types. Any help will be highly appreciated.
I have a
I would like to first offer something more useful. How about checking
fit below as an example)
## or `attr(terms(fit), "dataClasses")` attr(fit$terms, "dataClasses") # mpg qsec factor(am) wt factor(gear) # "numeric" "numeric" "factor" "numeric" "factor"
Since your question only mentions identifying data classes, this is sufficient. But if you want to access data for variables, check
$data. This is how
glm differs from
glm returns much more stuff than
lm, including the
data argument. Note,
lm does not return
A little more on
model.frame is the best procedure. But use it with some care.
dat <- mtcars fit <- glm(mpg ~ qsec + factor(am) + wt + factor(gear), data = dat, model = FALSE) rm(dat) model.frame(fit)
Error in is.data.frame(data) : object 'dat' not found
This is what I explained in a comment under OP's question: If
$model is not
model.frame simply extracts it. But if it is really
model.frame aims to reconstruct it. But to reconstruct it, you need access to original data frame. If original data frame is not available, you get nothing (but an error).
To understand this, be aware that
model.frame is an (S3) generic function:
.S3methods("model.frame") # model.frame.aovlist* model.frame.default model.frame.glm* # model.frame.lm*
model.frame.glm simple extract
$model from model object (if
$model is present); otherwise it calls
model.frame.default for constructing model frame from model formula and original data frame.