I'm writing a function to perform logistic regression on two columns of a dataframe. I can't get around the errors... I am trying to use 10-fold cross validation. Here's the code I'm using:

```
SAdata = read.table("http://statweb.stanford.edu/~tibs/ElemStatLearn/datasets/SAheart.data",
sep=",",head=T,row.names=1)
log.fun = function(x,y) {
prediction = data.frame()
tset = data.frame()
dframe = cbind(x,y)
dframe = as.data.frame(dframe)
dframe$fold = sample(1:10, nrow(data), replace = TRUE)
list = 1:10
for (i in 1:10) {
train = subset(dframe, fold %in% list[-i])
test = subset(dframe, fold %in% c(i))
model = glm(x~y, data=train, family=binomial)
pred = as.data.frame(predict(model, test[,-1]))
prediction <- rbind(prediction, pred)
}
}
log.fun(SAdata$chd,SAdata$obesity)
```

The error I get is "Error in sample.int(length(x), size, replace, prob) : invalid 'size' argument"

Any ideas?

`dframe$fold = sample(1:10, nrow(data), replace = TRUE)`

line. You don't have`data`

defined anywhere. What did you expect that to do? – MrFlick Nov 15 '14 at 22:25