I have a weird problem with R that I can't seem to work out.

I've tried to write a function that performs K-fold cross validation for a model chosen by the stepwise procedure in R. (I'm aware of the issues with stepwise procedures, it's purely for comparison purposes) :)

Now the issue is, that if I define the function parameters (linmod,k,direction) and run the contents of the function, it works flawlessly. BUT, if I run it as a function, I get an error saying the datas.train object can't be found.

I've tried stepping through the function with debug() and the object clearly exists, but R says it doesn't when I actually run the function. If I just fit a model using lm() it works fine, so I believe it's a problem with the step function in the loop, while inside a function. (try commenting out the step command, and set the predictions to those from the ordinary linear model.)

```
#CREATE A LINEAR MODEL TO TEST FUNCTION
lm.cars <- lm(mpg~.,data=mtcars,x=TRUE,y=TRUE)
#THE FUNCTION
cv.step <- function(linmod,k=10,direction="both"){
response <- linmod$y
dmatrix <- linmod$x
n <- length(response)
datas <- linmod$model
form <- formula(linmod$call)
# generate indices for cross validation
rar <- n/k
xval.idx <- list()
s <- sample(1:n, n) # permutation of 1:n
for (i in 1:k) {
xval.idx[[i]] <- s[(ceiling(rar*(i-1))+1):(ceiling(rar*i))]
}
#error calculation
errors <- R2 <- 0
for (j in 1:k){
datas.test <- datas[xval.idx[[j]],]
datas.train <- datas[-xval.idx[[j]],]
test.idx <- xval.idx[[j]]
#THE MODELS+
lm.1 <- lm(form,data= datas.train)
lm.step <- step(lm.1,direction=direction,trace=0)
step.pred <- predict(lm.step,newdata= datas.test)
step.error <- sum((step.pred-response[test.idx])^2)
errors[j] <- step.error/length(response[test.idx])
SS.tot <- sum((response[test.idx] - mean(response[test.idx]))^2)
R2[j] <- 1 - step.error/SS.tot
}
CVerror <- sum(errors)/k
CV.R2 <- sum(R2)/k
res <- list()
res$CV.error <- CVerror
res$CV.R2 <- CV.R2
return(res)
}
#TESTING OUT THE FUNCTION
cv.step(lm.cars)
```

Any thoughts?

`step(lm.1,direction=direction,trace=0)`

cannot find`datas.train`

, as you already know. I can't see the cause of the problem myself. Assigning`datas.train`

as a global variable is a work-around, but not a particularly satisfactory one (`datas.train <<- datas[-xval.idx[[j]],]`

). Perhaps this should be migrated to StackOverflow? – jthetzel Nov 21 '11 at 16:07`add1(fit, scope$add, scale = scale, trace = trace, k = k, ...)`

in`step()`

throws the error, where`add1()`

is`stats:::add1.lm`

. – jthetzel Nov 21 '11 at 16:30