F-score is a simple formula to gather the scores of precision and recall. Imagine you want to predict labels for a binary classification task (positive or negative). You have 4 types of predictions:
- true positive: correctly assigned as positive.
- true negative: correctly assigned as negative.
- false positive: wrongly assigned as positive.
- false negative: wrongly assigned as negative.
Precision is the proportion of true positive on all positives predictions. A precision of 1 means that you have no false positive, which is good because you never says that an element is positive whereas it is not.
Recall is the proportion of true positives on all actual positive elements. A recall of 1 means that you have no false negative, which is good because you never says an element belongs to the opposite class whereas it actually belongs to your class.
If you want to know if your predictions are good, you need these two measures. You can have a precision of 1 (so when you say it's positive, it's actutally positive) but still have a very low recall (you predicted 3 good positives but forgot 15 others). Or you can have a good recall and a bad precision.
This is why you might check f1-score, but also any other type of f-score. If one of these two values decreases dramatically, the f-score also does. But be aware that in many problems, we prefer giving more weight to precision or to recall (in web security, it is better to wrongly block some good requests than to let go some bad ones).