Precision in ML is the same as in Information Retrieval.
recall = TP / (TP + FN)
precision = TP / (TP + FP)
(Where TP = True Positive, TN = True Negative, FP = False Positive, FN = False Negative).
It makes sense to use these notations for binary classifier, usually the "positive" is the less common classification. Note that the precision/recall metrics is actually the specific form where #classes=2 for the more general confusion matrix.
Also, your notation of "precision" is actually accuracy, and is