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I'm trying to use the rfcv function in the randomForest package. I'm getting an error message as follows:

> rfcv1 <- rfcv(x[1:18750,], testClass[1:18750], cv.fold=2)
Error in cut.default(trainy, c(-Inf, quantile(trainy, 1:4/5), Inf)) : 
  'breaks' are not unique
> nrow(unique(x[1:18750,]))
[1] 18719
> length(unique(testClass[1:18750])) ## just 0's and 1's
[1] 2

> head(x)
       rfPred prediction
3  0.34776664 0.30138045
5  0.22345507 0.11159273
7  0.03478699 0.02156816
17 0.01008994 0.01071626
24 0.01738253 0.01546157
25 0.01143016 0.01278491

> range(x)
[1] 0.003907361 0.966005867

Anything seem off? I tried shrinking the data so that the unique values was divisible by 5, but still get the same message. I also tried various cv.fold= values without effect.

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up vote 1 down vote accepted

I'm just guessing here, but in the code for rfcv, we see:

if (classRF) {
   f <- trainy
else {
   f <- cut(trainy, c(-Inf, quantile(trainy, 1:4/5), Inf))

If you're doing classification, it just uses your trainy argument, otherwise it tries to cut the variable. So my guess is that you have a vector of integer 0's and 1's that you need to convert to a factor.

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That was it, just threw as.factor() around it and it worked. Thank you very much. – screechOwl Dec 7 '11 at 18:21

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