I was looking at some popular (i.e. highly voted) questions of Keras tag on Stack Overflow, and realized that, despite being viewed a lot of times, a few of those questions are poorly formatted or have a poor grammar. So I decided to edit them and fixed their formatting/grammar. Usually, when editing questions I also pay attention to the tags used because I have the impression that tags help a lot with searching and finding the relevant question(s). So I remove the irrelevant tags (if any), and try to add as much and relevant as possible tags to the question.
However, after I edited one of those questions, which involved removing two of the tags and adding two much more relevant tags, I realized this might have some side-effects: it might change the ranking of OP/answerer(s) in the removed/added tags, and even the answerer(s) might lose some tag badges (and possibly gain some other tag badges). Further, it might affect the developer story of answerer(s) and change their top percentiles.
So I just wanted to know what's the best approach to take when editing these highly-voted questions? Some options coming to my mind:
Just edit the question's content and don't touch the tags (unless some of them are absolutely and completely irrelevant).
Do as I already did (i.e. if you think a tag is not completely irrelevant, but it could be replaced with a more relevant tag then just do it)! It's OK and don't worry about top-user rankings or tag badges of answerer(s) or OP
I am over-thinking it too much and should not be that much obsessed about such a small matter (i.e. it does not matter whether I edit the tags or not!).
For reference, here is one of the edits I did (revision #5). My rationale for tag edits:
- I added loss-function because that's the primary topic of the question.
- I added classification because those loss functions are usually used in classification problems, and also the OP has mentioned that he/she is working on a classification problem and has reported classification accuracy values.
- I had to remove two tags: I decided to remove deep-learning because this question could be concerned with shallow networks as well, and is not at all specific to deep models (besides the fact that there is no direct reference to deep learning in question). Also, I removed neural-network because the conv-neural-network was already there and therefore I thought it has a neural network part and also it refers to the specific architecture the OP is using in his/her question (though, I have to confess that I was a bit skeptical on this last decision).