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?
Please help me..