# How is the “prediction” column in the Weka Naive Bayes output calculated?

I did a Naive Bayes classification using 10 fold cross-validation, obtaining a table prediction on the test data that looks like this:

=== Predictions on test data ===

inst#     actual  predicted   error  prediction      (name)
1    3:no_chang 3:no_chang           0.943       (region_1)
2    1:active_K 1:active_K           1           (region_2)
3    3:no_chang 3:no_chang           0.912       (region_3)
4    3:no_chang 3:no_chang           0.858       (region_4)
5    3:no_chang 2:active_G   +       0.518       (region_5)


I want to know how the "prediction" column is calculated. I know that it goes from 0 to 1, 1 meaning that the prediction is "better", but that's all I could find after a considerable amount of time googling and browsing the Weka book.

I know there is plenty of information about Weka online, but I'm a bit overwhelmed by it and can't easily find the answer to my simple question. Also, can someone point me to a good detailed weka manual for a command line user? The Weka book seems to focus too much in explaining how the GUI works, which doesn't really interest me since I mainly work with the command-line tools for the moment.

Thank you,

Juan

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Well I'm sure if you're using this, you know how a NB classifier works...? if so, you'd realize that a NB classifier does not make absolute predictions due to its probabilistic foundation. As such, I would guess that the prediction value is the probability of that classification associated with that point. Over a certain threshold, the classifier determines that is the correct classification, and assigns a label. –  im so confused Oct 4 '12 at 14:29
inf.ed.ac.uk/teaching/courses/inf2b/learnSlides/… is a theory-based tutorial for Naives Bayes classification. Not sure if it's quite what you're looking for. –  William M-B Nov 27 '12 at 13:39

By looking at the source code for the NaiveBayes class, there is a variable called m_ClassDistribution which keeps track of the class prediction.
I would recommend looking at the code for DiscreteEstimator and NaiveBayes. Particularly, distributionForInstance function, which is used in the test phase. It is a bit different from the normal calculation of naive bayes, as it also takes into account a weight associated with each feature.