Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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

share|improve this question
    
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

1 Answer 1

By looking at the source code for the NaiveBayes class, there is a variable called m_ClassDistribution which keeps track of the class prediction.

In the training phase, this variable is updated to reflect the apriori probability of each class. It is used in the test phase to calculate the posterior probability of a given sample belonging to a given class.

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.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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