I have compared the performance of two implementations of Naive Bayes in both NLTK and Scikits (Bernoulli versions, class priors doesn't matter as I am using exactly the same amount of training examples for each class) by plotting their corresponding learning curves for my 3-class problem. X axis is training dataset size (forget about the real values), and Y is accuracy. Here is what I got.

Any reason for this difference in performance ?