I also regularly (try to) answer questions in the usual tags like keras, tensorflow, and machine-learning.
The problem with this kind of questions is that I believe in most cases they are opinion based. Improving the performance of a machine learning model, while in most cases requires coding something, is not a task that only requires programming skills, but actual scientific research. If a question puts a dataset, some code, and some expectation on performance improvement, it is not always obvious how this can be achieved. It might require to run experiments, and basically throw things at the wall and see what sticks.
And this is even if the question is well written and has all the seemingly important details. As far as I know, questions in Stack Overflow (and other sites) should be answered in an objective way based on facts. If the question cannot be answered in this way, then its opinion based in my mind.
My professional opinion is that there are many non-programming issues that affect the performance of a machine learning model, particularly data, if you do not have enough data for the task, it is low quality, or not correctly captured, then your model will perform bad and this is not a programming problem.
So I use the following decision making process:
- Questions might be on-topic if the problem is related to a programming error or easily solvable with a particular library or technique, but this should not be a guess, and should be well explained with facts. Note that many common coding errors in ML have been asked and answered before, so this could be a duplicate question.
- If the question require you to give your opinion on how performance might be improved, then it is opinion based and should be closed.
- Some people ask for recommendations on models, datasets, etc. These are obviously off-topic as we do not make recommendations.
- Some people actually want to have a discussion on how performance might be improved, in this case, maybe it is better to suggest migration to one of the other SE sites like data science, AI, or stats.
In some cases I might leave a comment telling that this is not easy to answer and that the answer is opinion based, or to redirect to another site, but users do not always like the truth, or I might not have the time for that.
In any case many of these questions will not be answered just because literally nobody knows the answer. Question askers should be aware of this. Even with a PhD in ML and many years of experience, there are many things we still do not know.