When using R's `rpart`

function, I can easily fit a model with it. for example:

```
# Classification Tree with rpart
library(rpart)
# grow tree
fit <- rpart(Kyphosis ~ Age + Number + Start,
method="class", data=kyphosis)
printcp(fit) # display the results
plotcp(fit)
summary(fit) # detailed summary of splits
# plot tree
plot(fit, uniform=TRUE,
main="Classification Tree for Kyphosis")
text(fit, use.n=TRUE, all=TRUE, cex=.8)
```

My question is - How can I measure the "importance" of each of my three explanatory variables (Age, Number, Start) to the model?

If this was a regression model, I could have looked at p-values from the "anova" F-test (between `lm`

models with and without the variable). But what is the equivalence of using "anova" on `lm`

to an `rpart`

object?

(I hope I managed to make my question clear)

Thanks.