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How do I get a consistent answer using GridSearchCV in sci-kit learn? I assume I'm getting different answers b/c different random numbers are causing the folds to be different each time I run it, though it is my understanding that the below code should solve this as KFold has shuffle=False by default.

clf = GridSearchCV(SVC(), param_grid, cv=KFold(n, n_folds=10))
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Some estimator have a random_state, which could alter the outcome. SVC should be deterministic, as is KFold as you observed. Are you sure the rest of your script is deterministic? – Andreas Mueller May 29 '13 at 15:02
    
Pretty sure it is. Is the predict_proba() output of SVC deterministic? If I remember correctly a cross-validation is run to estimate some parameter for determining the probabilities, but this is done in LIBSVM and I thought deterministic as well. I ask b/c I'm not actually using SVC but a subclass I've created called ProbSVC which maps predict to predict_proba – user1507844 May 29 '13 at 16:08
    
It seems that predict_proba() is not deterministic... – user1507844 May 30 '13 at 14:30
    
Yes, the predict_proba does a 5-fold (I think) cross-validation to calibrate the probability output. Also, you should use the Scorer interface instead of subclassing imho ;) – Andreas Mueller May 31 '13 at 15:16
    
Was waiting for the dev version to be released before using Scorer...I'm not pro enough yet to be using the bleeding edge :) – user1507844 May 31 '13 at 18:38
up vote 1 down vote accepted

As you identified in the comments, predict_proba is NOT deterministic!

But it does accept a random_state (as does KFold). I've found before that setting shuffle=False can lead to really poor results if your data were collected in a non-random order, so IMHO you're better off using shuffle and setting random_state to some number.

From the docs

class sklearn.svm.SVC(C=1.0, kernel='rbf', degree=3, gamma=0.0, coef0=0.0, shrinking=True, probability=False, tol=0.001, cache_size=200, class_weight=None, verbose=False, max_iter=-1, random_state=None)

random_state : int seed, RandomState instance, or None (default)

The seed of the pseudo random number generator to use when shuffling the data for probability estimation.

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I think you're looking for this parameter: random_state=7

Most things that have a random_state parameter leave it at None, which allows variation.

You must set it to some number to get consistent results.

I set it to 7 because I like 7. Pick any number.

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