I am getting quite different results when classifying text (in only two categories) with the Bernoulli Naive Bayes algorithm in NLTK and the one in scikitlearn module. Although the overall accuracy is comparable between the two (although far from identical) the difference in Type I and Type II errors is significant. In particular, the NLTK Naive Bayes classifier would give more Type I than Type II errors , while the scikitlearn  the opposite. This 'anomaly' seem to be consistent across different features and different training samples. Is there a reason for this ? Which of the two is more trustworthy?
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NLTK does not implement Bernoulli Naive Bayes. It implements multinomial Naive Bayes but only allows binary features. 

