I am perplexed by the different results I obtained when I ran code like this:

```
set.seed(100)
test1<-randomForest(BinaryY~., data=Xvars, trees=51, mtry=5, seed=200)
predict(test1, newdata=cbind(NewBinaryY, NewXs), type="response")
```

and this code:

```
set.seed(100)
test2<-randomForest(BinaryY~.,data=Xvars,trees=51, mtry=5,seed=200,xtest=NewXs, ytest=NewBinY)
```

The confusion matrices for the two forests I thought would be the same by virtue of the same seed settings, but they differ as do the predicted values as well as the votes. At first I thought it was just the way ties were broken, so I changed the number of trees to an odd number so there are no ties anymore.

Can anyone shed light on what I am hoping is a simple oversight? I just can't figure out why the results of the predictions from these two forests applied to the NewBinaryYs and NewX data sets would not be the same.

Also, I noticed that the results are the same when I am only using 1 tree.

Thanks for any hints and help.