# Calculate Precision and Recall

I am really confused about how to calculate Precision and Recall in Supervised machine learning algorithm using NB classifier

Say for example
*1)*I have two classes A,B
*2)*I have 10000 Documents out of which 2000 goes to training Sample set(class A=1000,class B1000) *3)*Now on basis of above training sample set classify rest 8000 documents using NB classifier
*4)*Now after classifying 5000 documents goes to class A and 3000 documents goes to class B
*5)*Now how to calculate Precision and Recall?

Thanks

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Hi you have to divide results into four groups -
True class A (TA) - correctly classified into class A
False class A (FA) - incorrectly classified into class A
True class B (TB) - correctly classified into class B
False class B (FB) - incorrectly classified into class B

precision = TA / (TA + FA)
recall = TA / (TA + FB)

You might also need accuracy and F-measure:

accuracy = (TA + TB) / (TA + TB + FA + FB)
f-measure = 2 * ((precision * recall)/(precision + recall))

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Tom Thanks for the reply.Now how to identify TA,FA,TB,FB?Do i have to manually check all the classified documents or is there some method for it? –  user1051536 Dec 8 '12 at 13:19
You can run tests for each class separately and calculate correctly classified and incorrectly classified. For example when you run your tests for test documents labeled as A there are two possible classifications for each document: if the classification is A, add 1 to TA, if the classification is B add 1 to FB. Similarly for B: if the classification is A, add 1 to FA and if classification is B add 1 to TB. I hope you understand. :-) Of course you don't have to divide tests into two runs for class A and for class B, you can do this in only one run but I think this is easier to understand. –  Tom Marek Dec 8 '12 at 13:58
Thanks Tom,I understood u really did save my day..This what i was confused of..Now i understood the solution..Thanks once more.. –  user1051536 Dec 11 '12 at 7:25
Tom I again need your help.I would like to know how to calculate f-measure for more than two classes –  user1051536 Jul 2 '13 at 23:37
Hi, sorry it took me so long to reply. You need to calculate macro F-measure. Have a look at this article: rushdishams.blogspot.cz/2011/08/… -Tom –  Tom Marek Sep 9 '13 at 12:47