I have some machine learning results that I don't quite understand. I am using python sciki-learn, with 2+ million data of about 14 features. The classification of 'ab' looks pretty bad on the precision-recall curve, but the ROC for Ab looks just as good as most other groups' classification. What can explain that?

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  • Is your set balanced? (ie. as many ab as non-ab) – Calimo Oct 23 '15 at 7:05
  • No it's very unbalanced, Ab is less than 2% – KubiK888 Oct 23 '15 at 7:21
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    Here you go. Try oversampling to mitigate the issue. – Calimo Oct 23 '15 at 7:41

Class imbalance.

Unlike the ROC curve, PR curves are very sensitive to imbalance. If you optimize your classifier for good AUC on an unbalanced data you are likely to obtain poor precision-recall results.

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    I see, but what does it really mean in terms of the performance of the test? Is it good (based on ROC) or bad (based on P-R)? How can a test be good if in the above P-R curve that the best it can do is 40% for both precision and recall? – KubiK888 Oct 23 '15 at 13:04
  • It means that you have to be careful when you report the performance of a test on unbalanced data. In medical applications it can have a terrible impact (see AIDS testing as a textbook case), in others it can be fine, it really depends on your specific application. – Calimo Oct 23 '15 at 22:35
  • I didn't tweak the default setting as I am using scikit learn, but like you said it seems to optimize based on AUC, is there a way to optimize based on Precision/recall pair in unbalanced data? – KubiK888 Oct 25 '15 at 3:58
  • You should post this as a new question. – Calimo Oct 26 '15 at 6:41

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