I' m doing a project to detect spam accounts according to a tutorial. Two labels —— "Spam" and "Not spam" are used to train and test. Classification have been finished and I'm heading for evaluation.
The results are:
*Spam* precision: 0.962917933131 *Spam* recall: 0.6336 *Not spam* precision: 0.72697466468 *Not spam* recall: 0.9756
I've read the wiki of precision and recall, still confused and have no idea how to use it for measurement.
My purpose is to reduce the number of Normal accounts which is labelled as "Spam". It doesn't matter that some "Spam" accounts could escape. So I want to know which result above should I focus to improve? Thanks.