Precision is the fraction of results classified as positive, which are indeed positive.
Recall is the fraction of all positive results which were detected.
My purpose is to reduce the number of Normal accounts which is labelled as "Spam".
This means you want to maximize the precision of Spam and recall of Not spam. The wiki page you link to explains all you need to know - in fact your purpose is to minimize the number of "false positives" (which is included in both of these characteristics).
Suggested keyphrase: Confusion Matrix.