It is not clear to me what confidence intervals would mean for regression trees as those are not classical statistical models like linear models. And I see mainly two uses: characterising the certainty of your tree or characterizing the precision of the prediction for each leaf of the tree. Hereafter an answer for each of these possibilities.

## Characterizing the certainty of your tree

If you are looking for a confidence value for a split node, then `party`

provides that directly as it uses permutation tests and statistically determine which variables are most important and the p-value attached to each split. A significant superiority of `party`

's `ctree`

function over `rpart`

as explained here.

## Confidence intervals for set leafs of the regression tree

Third, if you are looking for a confidence of interval for the value in each leaf, then the [0.025,0.975] quantiles interval for the observations in the leaf is most likely what you are looking for. The default plots in `party`

takes a similar approach when displaying boxplots for the output value for each leaf:

```
library("party")
r2 <- ctree(Sepal.Length ~ .,data=iris)
plot(r2)
```

Retrieving the corresponding intervals can simply be done by:

```
iris$leaf <- predict(r2, type="node")
CIleaf <- aggregate(iris$Sepal.Length,
by=list(leaf=iris$leaf),
quantile,
prob=c(0.025, 0.25, 0.75, 0.975))
```

And it's easy to visualize:

```
plot(as.factor(CIleaf$leaf), CIleaf[, 2],
ylab="Sepal length", xlab="Regression tree leaf")
legend("bottomright",
c(" 0.975 quantile", " 0.75 quantile", " mean",
" 0.25 quantile", " 0.025 quantile"),
pch=c("-", "_", "_", "_", "-"),
pt.lwd=0.5, pt.cex=c(1, 1, 2, 1, 1), xjust=1)
```

`rpart`

, but you can from`ctree`

in the`party`

package. See this SO answer.`where`

function to match the row of the dataset with the leaf node and then to use the empirical data to estimate an interval?