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My code is simple:

#load rpart library
library(rpart)

# set directory to path where data is located
setwd("U:/ActClosures")

# load data into a table
closure_data <- read.csv("petiteacctdata.csv")

# Closure data will be predicted
fit <- rpart(Closures ~ Entity.Region + Strategy + Portfolio.Manager + Client.Service.Executive
+ Base.Currency.Code + Excess.ITD.Rtn + Excess.1M.Rtn + Excess.3M.Rtn + Acct.1Y.TE
+ Acct.1Y.IR + Acct.3Y.TE + Acct.3Y.IR + Acct.5Y.TE + Acct.5Y.IR + GDR.Derivative.Indicator
+ Time.with, method="class", data=closure_data,control=rpart.control(minsplit=1))

I posted a question earlier on how to tackle this machine learning problem I am attempting. I have tried to use a decision tree to estimate the probability that an account will close. For an example of the data please see my previous question. Every time I try to run this program, R stops responding although from what I can tell, it is not an especially large data set. I will appreciate any ideas anyone has on this project.

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Please add a link to the original question and the dataset in case it is available. –  Matt Jul 23 '12 at 21:36
    
Wild guess: Use a more sensible value for minsplit (e.g. 30) and verify if it gets faster (with a minsplit of 1 I suspect that the tree gets very large). –  Matt Jul 23 '12 at 21:37
2  
...and you should definitely set xval = 0 in rpart.control so that rpart will no longer be doing 10 fold cross validation. That should speed things up by a factor of, well, 10. –  joran Jul 23 '12 at 21:39

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