I am running 10-fold CV using the KFold function provided by scikit-learn in order to select some kernel parameters. I am implementing this (grid_search)procedure:
1-pick up a selection of parameters 2-generate a svm 3-generate a KFold 4-get the data that correspons to training/cv_test 5-train the model (clf.fit) 6-classify with the cv_testdata 7-calculate the cv-error 8-repeat 1-7 9-When ready pick the parameters that provide the lowest average(cv-error)
If I do not use shuffle in the KFold generation, I get very much the same results for the average( cv_errors) if I repeat the same runs and the "best results" are repeatable. If I use the shuffle, I am getting different values for the average (cv-errors) if I repeat the same run several times and the "best values" are not repeatable. I can understand that I should get different cv_errors for each KFold pass but the final average should be the same. How does the KFold with shuffle really work? Each time the KFold is called, it shuffles my indexes and it generates training/test data. How does it pick the different folds for "training/testing"? Does it have a random way to pick the different folds for training/testing? Any situations where its avantageous with "shuffle" and situations that are not??