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 Sangrock Lee 10-22-2016 09:43 AM

data snooping

Is it data snooping even looingk at training data set? Assume that test data set is completely unknown, Of course.

 CountVonCount 11-03-2016 09:08 AM

Re: data snooping

Quote:
 Originally Posted by Sangrock Lee (Post 12464) Is it data snooping even looingk at training data set? Assume that test data set is completely unknown, Of course.
That is an interesting question and I don't know the exact answer. But I try to give an answer that fits to my understanding.

If you look at the trainings data set you do some "learning" in your mind. Thus you decrease the number of hypothesis dramatically by choosing a hypothesis set that seems to fit to the trainings data.
This means you cannot work with from the reduced hypothesis set to calculate the generalization bound. Instead you need to use a higher , but it is unclear which to use, since you don't know exactly the of the full hypothesis set in your mind before looking at the data.

However if you have not looked at the test-data and keep this data safe until you find the final hypothesis g(x) you can verify your final hypothesis with the test-data. The result is and with the Hoeffding-bound you can estimate your completely independent of the VC-Dimension value.

Thus my answer is: Yes it is snooping, if you look at the trainings data. Thus you cannot calculate the generalization bound out of the VC-Dimension. But since you have not looked at the test-data you can instead calculate the Hoeffding-bound and the result is a valid estimate for the out-of-sample error.
However keep in mind, that after this calculation your test-data is also compromised and you cannot simply repeat the procedure, if the result is not as expected.

 Sangrock Lee 12-17-2016 04:24 PM

Re: data snooping

Ah, thanks a ton!!!!! It sounds like there are two kinds of data snooping: i) looking at the training data and ii) looking at the test data. I guess looking at the training data can be commonly and inevitably happening if we are to use learning algorithms which require a training process, such as neural network, PLA, support vector machine, and so on.

 hidir 12-26-2016 10:29 PM

Re: data snooping

Quote:
 Originally Posted by CountVonCount (Post 12485) That is an interesting question and I don't know the exact answer. But I try to give an answer that fits to my understanding. If you look at the trainings data set you do some "learning" in your mind. Thus you decrease the number of hypothesis dramatically by choosing a hypothesis set that seems to fit to the trainings data. This means you cannot work with from the reduced hypothesis set to calculate the generalization bound. Instead you need to use a higher , but it is unclear which to use, since you don't know exactly the of the full hypothesis set in your mind before looking at the data. However if you have not looked at the test-data and keep this data safe until you find the final hypothesis g(x) you can verify your final hypothesis with the test-data. The result is and with the Hoeffding-bound you can estimate your completely independent of the VC-Dimension value. Thus my answer is: Yes it is snooping, if you look at the trainings data. Thus you cannot calculate the generalization bound out of the VC-Dimension. But since you have not looked at the test-data you can instead calculate the Hoeffding-bound and the result is a valid estimate for the out-of-sample error. However keep in mind, that after this calculation your test-data is also compromised and you cannot simply repeat the procedure, if the result is not as expected.
thanks

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