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I am trying to run logistic regression in R-

data <- read.dta("http://www.ats.ucla.edu/stat/stata/dae/binary.dta")

model <- glm(admit~ gre + gpa + rank , family = binomial("logit"),data=data )

#Negative Estimated or coffieient means as it leads to less probability, so our case rank must be negative

Now I tried to use predict and there I got an error-


Above throws error-

Error in plot(predict(model), residuals(model)) : 
  error in evaluating the argument 'x' in selecting a method for function 'plot': Error in nrow(X) : argument "X" is missing, with no default

Then again I tried-

predict(model,newdata=data,type = "response")

got error as unused -

Error in predict(model, newdata = data, type = "response") : 
  unused arguments (newdata = data, type = "response")
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closed as off-topic by Simon O'Hanlon, csgillespie, Blue Magister, joran, talonmies May 20 '14 at 17:54

This question appears to be off-topic. The users who voted to close gave this specific reason:

  • "This question was caused by a problem that can no longer be reproduced or a simple typographical error. While similar questions may be on-topic here, this one was resolved in a manner unlikely to help future readers. This can often be avoided by identifying and closely inspecting the shortest program necessary to reproduce the problem before posting." – Simon O'Hanlon, csgillespie, joran, talonmies
If this question can be reworded to fit the rules in the help center, please edit the question.

Could you explain what you mean by the statement: "Negative Estimated or coffieient means as it leads to less probability, so our case rank must be negative"? –  Simon O'Hanlon May 20 '14 at 11:07
What is class(model)? –  Roland May 20 '14 at 11:07
Your code works for me (once I loaded the required package foreign). –  Simon O'Hanlon May 20 '14 at 11:08
Ditto. Works for me too. Not reproducible. –  Andrie May 20 '14 at 11:09
I am guessing that you have another predict function in your workspace that is masking predict.glm. What are the results of getAnywhere("predict") ? –  Ben Bolker May 20 '14 at 12:26