To be able to use this, I assume you split up your training set into a subset training set and a test set.
To create the training model you can use:
model <- rpart(y~., traindata, minbucket=5) # I suspect you did it so far.
To apply it to the test set:
pred <- predict(model, testdata)
You then get a vector of predicted results.
In your training test data set you also have the "real" answer. Let's say the last column in the training set.
Simply equating them will yield the result:
pred == testdata[ , last] # where 'last' equals the index of 'y'
When the elements are equal, you will get a TRUE, when you get a FALSE it means your prediction was wrong.
pred + testdata[, last] > 1 # gives TRUE positive, as it means both vectors are 1
pred == testdata[, last] # gives those that are correct
It might be interesting to see how much percent you have correct:
mean(pred == testdata[ , last]) # here TRUE will count as a 1, and FALSE as 0