I'm solving a classification problem with sklearn's logistic regression in python.

My problem is a general/generic one. I have a dataset with two classes/result (positive/negative or 1/0), but the set is highly unbalanced. There are ~5% positives and ~95% negatives.

I know there are a number of ways to deal with an unbalanced problem like this, but have not found a good explanation of how to implement properly using the sklearn package.

What I've done thus far is to build a balanced training set by selecting entries with a positive outcome and an equal number of randomly selected negative entries. I can then train the model to this set, but I'm stuck with how to modify the model to then work on the original unbalanced population/set.

What are the specific steps to do this? I've poured over the sklearn documentation and examples and haven't found a good explanation.

2 Answers 2


Have you tried to pass to your class_weight="auto" classifier? Not all classifiers in sklearn support this, but some do. Check the docstrings.

Also you can rebalance your dataset by randomly dropping negative examples and / or over-sampling positive examples (+ potentially adding some slight gaussian feature noise).

  • 1
    Yes, class_weight='auto' works great. Is there any advantage to not use the built-in/black-box auto weight but instead to rebalance the training set (as I originally did)? Regardless, if I took the approach of balancing the training set, how do I adjust the fit/trained model to apply to an unbalanaced test set? Feb 23, 2013 at 5:17
  • 9
    It's not that black box: it just re-weighting the samples in the empirical objective function being optimized by the algorithm. Under-sampling over-represented classes is good because training is faster :) but you are dropping data which is bad, especially if your model is already in an overfitting regime (significant gap between train and test scores). Over-sampling is in generally mathematically equivalent to re-weighting but slower because of duplicated operations.
    – ogrisel
    Feb 23, 2013 at 14:42

@agentscully Have you read the following paper,

[SMOTE] (https://www.jair.org/media/953/live-953-2037-jair.pdf). I have found the same very informative. Here is the link to the Repo. Depending on how you go about balancing your target classes, either you can use

  • 'auto': (is deprecated in the newer version 0.17) or 'balanced' or specify the class ratio yourself {0: 0.1, 1: 0.9}.
  • 'balanced': This mode adjusts the weights inversely proportional to class frequencies n_samples / (n_classes * np.bincount(y)

Let me know, if more insight is needed.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.