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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 X1, X2 and X3 are? At this point I do not have the data frame to investigate the data types. Any help will be highly appreciated.

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  • Not sure exactly what you mean by not having access to the dataframe, but the typical way to figure out the data type of an object is to use the class(). For example var <- "foobar"; class(var) returns [1] "character". You are probably going to need to load the Rdata file in R, then you might be able to check the contents of the glm object with str(), and then try something like class(glm$X1) – user5359531 Nov 15 '16 at 20:35
  • @ZheyuanLi, I'd recommend not depending on $model, as that will return NULL if model = FALSE was used in the function call. model.frame (see my answer below) will still work though. – Benjamin Nov 15 '16 at 20:40
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I would like to first offer something more useful. How about checking $terms? (Using 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 lm. glm returns much more stuff than lm, including the data argument. Note, lm does not return data.


A little more on model.frame

Almost always, 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 NULL, model.frame simply extracts it. But if it is really NULL, 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")
#[1] model.frame.aovlist* model.frame.default  model.frame.glm*    
#[4] model.frame.lm*

model.frame.lm and 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.

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  • Well reasoned. It seems I've never run into the specific scenario, and hadn't thought through the consequences. I would still argue for model.frame simply because it will still succeed in cases where model = FALSE and you have access to the data frame; $model will return NULL. It won't make a difference in the context of this question, but in other contexts it may. – Benjamin Nov 15 '16 at 21:18
  • attr(fit$terms, "dataClasses") solved my immediate problem. I appreciate the extra explanations. It helped me clear few more things. – S_Dhungel Nov 18 '16 at 14:18

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