i'm a bit newbie in R data mining algorithms and I need to develop a script that help me to predict an event. So, i've chosen a decision tree model to help with this task.

My dataset has this structure:

```
_____________________________
ATTR1 | ATTR2 | ATTR3 | CLASS
Y | N | N | N
______|______|_______ |_______
```

and this are the scripts that i've created:

```
library(party)
myFormula <- CLASS ~ ATTR1 + ATTR2 + ATTR3
ind <- sample(2, nrow(myData), replace=TRUE, prob = c(0.7,0.3))
trainData <- myData[ind==1,]
testData <- myData[ind==2,]
energy_ctree <- ctree(myFormula, data=trainData)
testpred <- predict(energy_ctree, newdata= testData)
```

all this commands work just fine. So, my doubt is about to predict new lines of data!

i've called the function **predict(energy_ctree ,newdata=newdataSet)** with new dataset excluding the CLASS columns (that I want to find through decision tree model prediction).

This is the error message i get:

```
"Error in checkData(oldData, RET) :
Levels in factors of new data do not match original data"
```

So, what are the steps to predict de **Class column** of my newDataSet based on the decisionTree model that i've created before.

Thanks in advance.

Carlos Lima