Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

so im in the middle of writing a decision tree program. lets say i have a dataset of 1000 instances. as i understand it - with cross validation i split the dataset to 900-100 groups. each time using a different 900 set to create the tree and 100 to test it

what i don't understand is these questions: 1. which tree do i use to as my final decision tree (choosing the one with the least error isn't a good option because i guess it could be because of over-fitting) 2. is cross validation used only to estimate the error in the final tree? 3. i found some different algorithms about cross-validation, some used the same splitting criterion, and some used different ones in order to choose the best tree- can you point me to a good place with information so i could figure out exactly what i need? or explain your self?

Thank you!

share|improve this question

2 Answers 2

Cross validation is used to estimate how accurate your model is predicting.

The best tree should consist best classifiers. i.e. the attributes that seperates the data well, so you can start building your decision-tree, using that attributes.

I suggest you to search over Wikipedia and Uncle Google to get more info about decision trees

share|improve this answer
    
i know that the best tree should consist the best attributes that separates the data well.. thats the point of the decision tree. there are many way of deciding which attribute is best (i.e gain ration, information gain, gini index , etc') - my question was - how does cross validation help me, if it even does, to choose the way i decide on the splitting criterion –  ABR Feb 8 '13 at 13:22
    
  1. Pick the tree that performs best on the test data.

  2. Cross-validation is used as part of training to tweak your result. The test data is used to check the error of the final tree.

  3. You need a completely separate test set (otherwise you're tainting your results).

    So split the data into say 400 train, 100 cross-validation and 500 test. How you choose to split it greatly depends on how much data you have available and how complex the problem is you are trying to solve. Cross-validation is generally around 10% of training data. If you have lots of data or a simple problem, you can go up to 50-50 (train+cross-validation)-test, but if you only have a small amount of data or a complex problem, you may want to reduce it to as low as 10% test data.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.