I am currently exploring PU learning. This is learning from positive and unlabeled data only. One of the publications [Zhang, 2009] asserts that it is possible to learn by modifying the loss function of an algorithm of a binary classifier with probabilistic output (for example Logistic Regression). Paper states that one should optimize Balanced Accuracy.

Vowpal Wabbit currently supports five loss functions [listed here]. I would like to add a custom loss function where I optimize for AUC (ROC), or equivalently, following the paper: 1 - Balanced_Accuracy.

I am unsure where to start. Looking at the code reveals that I need to provide 1st, 2nd derivatives and some other info. I could also run the standard algorithm with Logistic loss but trying to adjust l1 and l2 according to my objective (not sure if this is good). I would be glad to get any pointers or advices on how to proceed.

UPDATE More search revealed that it is impossible/difficult to optimize for AUC in online learning: answer

  • 1
    John Langford confirmed that AUC can generally be optimized by changing the ratio of false positive and false negative loss. In VW, this means setting a different importance weight for positive and negative examples. You need to tune the optimal weight using a hold out set (or cross validation). – Martin Popel Oct 20 '14 at 12:59
  • @MartinPopel Thank you! I found that for my application SVM perf from T. Joachims does the job perfecly. I can use his linear SVM implementation where the custom loss function optimizes the criterion I am looking for. There is no need for a held out set (at least for setting the weights). – Vladislavs Dovgalecs Oct 20 '14 at 18:02
up vote 1 down vote accepted

I found two software suites that are immediately ready to do PU learning:

(1) SVM perf from Joachims

Use the ``-l 10'' option here!

(2) Sofia-ml

Use ``--loop_type roc'' option here!

In general you set +1'' labels to your positive examples and-1'' to all unlabeled ones. Then you launch the training procedure followed by prediction.

Both softwares give you some performance metrics. I would suggest to use standardized and well established binary from KDD`04 cup: ``perf''. Get it here.

Hope it helps for those wondering how this works in practice. Perhaps I prevented the case XKCD

  • Did you find any implementation in R or Python? – hmi2015 Jul 31 '15 at 18:27

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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