Posting here because I have been working twice on elaborate/educational answers to machine learning implementation questions asked by beginners, just to see these questions removed before I could even finish editing my answers.

I have an experience in teaching machine learning and mathematical modelling to junior engineers and graduate students. These are topics where theory and implementation and intertwined and I have repeatedly encountered situations where they struggled because of learning at the same time a theory, a programming language, and programming in itself.

These students, self-learners, professionnals re-training themselves, ask on SO those questions showing that they do not fully master either mathematical theory, programming using python/sklearn/R, or even more frequently the link between these.

There was for example a question about the implementation of linear regression to fit an exponential curve, where the asker had mixed a reasoning error and an insufficient knowledge of the LinearRegression estimator in scikit-learn.

It got deleted from SO because the question stemmed from a "machine learning theory" context, it could not have been asked on CV because it was a canonically well written answer for SO, with the expected personal research and reproducible code. (On a more personal note, even as a data science professional, I am never really sure about what fits on CV which seems to expect statistics and machine learning questions but refuses programming and mathematics).

Of course some askers are abusing the Q&A system, try to have their ML implementation job done here, and their questions should be downvoted and deleted.

But, and it is an open question, what is the place for these numerous honest learners who experience real difficulties linking theory and programming, and how can we help them?

  • I'm not saying that either of these are correct, I don't use either of the sites, but both Cross Validated and Data Science both state that they are for Machine Learning. Might be worth checking their help centres and tours to see if what you're after is on topic there. – Larnu Apr 15 at 8:03
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    I have expressed myself concerning CrossValidated in this post. I had great hopes with DataScience, I monitor questions on my topics there... and it's VERY calm. I can understand why people ask questions on SO: python, pandas, sklearn experienced users, even core devs are here. – Guillaume Ansanay-Alex Apr 15 at 8:07
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  • I don't think that my question is answered either by "Let's gift wrap our (good) machine learning theory questions for Cross Validated ", "Guidance for asking machine learning questions", or "Do pure “machine learning” questions belong to Stack Overflow?". There might be one hint in "Standard for machine learning questions" to, if I rephrase, throw these questions to "Data Science SE [which] is more permissive than the other sites, likely as a consequence of its wide scope and low traffic". 3 of 4 of the 'related' Qs being irrelevant, I don't think this question deserved being downvoted. – Guillaume Ansanay-Alex Apr 15 at 8:32
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    Whether any downvote is deserved or not is not up to a single person's judgement. With that said, the linked questions should touch the specific concern about handling machine learning questions. If we were to provide a short answer to "what is the place for these numerous honest learners", this gets into "is the SE network a place for learning?" territory, which has a different domain of answers. meta.stackoverflow.com/questions/402293 meta.stackexchange.com/questions/297483 – E_net4 the janitor Apr 15 at 9:01

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