Submitted by Visual-Arm-7375 t3_zd6a6j in MachineLearning
killver t1_iz02xc3 wrote
Reply to comment by Visual-Arm-7375 in [D] Model comparison (train/test vs cross-validation) by Visual-Arm-7375
Other question: how can hyperparameters overfit on validation data, if it is a correct holdout set?
In your definition, if you make the decision on another local test holdout, the setting is exactly the same, no difference. And if you do not make a decision on this test dataset, why do you need it?
The important thing is that your split is not leaky and represents the unseen test data well.
Visual-Arm-7375 OP t1_iz03pqj wrote
Is not validation data, it is test data. You haven't checked the accuracy on the test data as another fold you average for getting the mean accuracy in the cross-validation. There you can see how the model is generalizing with the hyperparameters selected in the cross-validation.
killver t1_iz03u95 wrote
And then what?
Visual-Arm-7375 OP t1_iz04glk wrote
Have a look at this: https://towardsdatascience.com/train-test-split-c3eed34f763b
Visual-Arm-7375 OP t1_iz04hi2 wrote
What do you think about it?
killver t1_iz04uyh wrote
Look - I will not read now through a random blog, either you believe me and try to critically think it through or you already made up your mind anyways, then you should not have asked.
I will add a final remark.
If you make another decision (whether it generalizes well or not) on your holdout test dataset, you are basically just making another decision on it. If it does not generalize, what do you do next? You change your hyperparameters so that in works better on this test set?
What is different then vs. doing this decision on your validation data?
The terms validation and test data are mixed a lot in literature. In principle the test dataset how you define it, is just another validation dataset. And you can be more robust, by just doing multiple validation datasets, which k-fold is doing. You do not need this extra test dataset.
If you feel better doing it, go ahead. It is not "wrong" - but just not necessary and you lose train data.
Visual-Arm-7375 OP t1_iz065iq wrote
I don't have a clear opinion, I'm trying to learn and I'm proposing a situation and you're not listening. You are evaluating the performance of the model with the same accuracy you are selecting hyperparameters, this does not make sense.
Anyway, thank you for your help, really appreciate it.
killver t1_iz06mz6 wrote
Maybe that's your confusion, getting a raw accuracy score that you are communicating, vs. finding and selecting hyperparameters/models. Your original post asked about model comparison.
Anyways, I suggest you take a look at how research papers are doing it, and also browse through Kaggle solutions. Usually people are always doing local cross validation, and the actual production data is the test set (e.g. ImageNet, Kaggle Leaderboard, Business Production data, etc.).
rahuldave t1_iz4u6o4 wrote
Many kaggle competitions will have public and private leaderboards. And you are strongly advised to separate out your own validation set from the training data they give you to choose your best model to compare on the public leaderboard. And there are times people have fit to the public leaderboard, but this can be checked with adverserial validation and the like. If you like this kinda stuff, both Abhishek Thakur and Konrad Banachevicz's books are real nice...
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