i am performing logistic regression using this page. my code is as below.

```
mydata <- read.csv("http://www.ats.ucla.edu/stat/data/binary.csv")
mylogit <- glm(admit ~ gre, data = mydata, family = "binomial")
summary(mylogit)
prob=predict(mylogit,type=c("response"))
mydata$prob=prob
```

after running this code mydata dataframe has two columns - 'admit' and 'prob'. shouldnt those two columns sufficient to get the ROC curve? how can i get the ROC curve.

Secondly, by loooking at mydata, it seems that model is predicting probablity of admit=1. is that correct? how to find out which particular event the model is predicting?

Thanks

UPDATE: it seems that below three commands are very useful. they provide the cutoff which will have maximum accuracy and then help to get the ROC curve

```
coords(g, "best")
mydata$prediction=ifelse(prob>=0.3126844,1,0)
confusionMatrix(mydata$prediction,mydata$admit
```

`with(mydata, table(admit,gre))`

? Logistic regression is just estimating over a bunch of tables.) – BondedDust Aug 26 '13 at 17:21