[R] Jackknife and rpart
Frank E Harrell Jr
fharrell at virginia.edu
Wed Apr 16 19:49:12 CEST 2003
On Wed, 16 Apr 2003 10:28:08 -0700
chumpmonkey at hushmail.com wrote:
>
> Hi,
>
> First, thanks to those who helped me see my gross misunderstanding of
> randomForest. I worked through a baging tutorial and now understand the
> "many tree" approach. However, it is not what I want to do! My bagged
> errors are accpetable but I need to use the actual tree and need a single
> tree application.
>
> I am using rpart for a classification tree but am interested in a more
> unbaised estimator of error in my tree. I lack sufficent data to train
> and test the tree and I'm hoping to bootstrap, or rather jacknife, an
> error estimate.
>
> I do not think the rpart.object can be applied to the jackknife function
> in bootstrap but can I do something as simple as:
>
> for(i in 1:number of samples){
> remove i from the data
> run the tree
> compare sample[i] to the tree using predict
> create an error matrix}
>
> This would give me a confussion matrix of data not included in the tree's
> constuction.
>
> Am I being obtuse again?
>
> Thanks, CM
>
> ______________________________________________
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You might look at the validate.tree function in the Design library (http://hesweb1.med.virginia.edu/biostat/s/Design.html) but better validated predictive accuracy would be obtained by approximating the predictions from the randomForest by a single (moderately large) tree. You can use rpart to develop such a tree, stopping when, for example, the R-square is 0.9 or 0.95.
---
Frank E Harrell Jr Prof. of Biostatistics & Statistics
Div. of Biostatistics & Epidem. Dept. of Health Evaluation Sciences
U. Virginia School of Medicine http://hesweb1.med.virginia.edu/biostat
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