(noob in ML, be patient) I want to test the performance of my scikit-learn SVMLinear classifier. My train-set has a different class distribution than the actual population, but my test-set is a representative, and distributes like the actual population.
I noticed that there's a class-weight parameter, and I want to try giving my classifier the actual population distribution, and see if it helps it perform better.
However - as my train-set distribution is different, so will be my validation set, right? So should I expect an improvement on the validation, or must I use my test-set to see the improvement? And if so - isn't it against the rules to calibrate using the test-set which will lead to burning the test-set or overfitting?
I've thought about bootstrap re-sampling of my train-set: making it distribute the same as the general population, and only then training and validating my model. Is this a good solution?
Thanks!