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I'm looking for a way to automatically generate a parser and a translator from a corpus of code sources and their translation in another computer language.

  • The corpus is wikipedia.
  • The source language is mediawiki markup, the target language is html.
  • The AST I'm interested in, is the one extracted from a text written using mediawiki markup.

Background story:

  • I am imposing myself this exercise, as a way to dive into "machine learning"
  • It happens that I find no mediawiki markup parser in scheme

In particular:

  • Is it possible to come up with an algorithm, that can generate a parser or translator or both without giving the algorithm hints about the source and target languages? hints can be «what are token in target and source languages». If yes, how does look like this algorithm? I'm interested in both modes "with and without hints".
  • Can the same generated program do the opposite operation target->source?
  • Is it possible to understand how the generated program compute the result?

I'm not looking for a ready to consume code. If it exists please share.

I'm also interested to know how the machine-learning algorithms/technics (if any) can be applied to other problems/domains.

My prefered way to model data is the graph, if doesn't make sens, don't push it too hard.

edit0: I don't need the program to understand the underlying knowledge that are represented in both source and target. Just learn how to go from that source to target. This is different from NLP - as I understand it, as you can not build a program that generates a grammar for all english possible meaninful sentences. Both in target and source the number of token can not be compared to a natural language vocabulary.**

Like I said, no code is required but this might come handy:

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closed as too broad by blubb, Jim Mischel, Appleman1234, Dmitry Dovgopoly, Uwe Keim Mar 25 '14 at 6:26

There are either too many possible answers, or good answers would be too long for this format. Please add details to narrow the answer set or to isolate an issue that can be answered in a few paragraphs.If this question can be reworded to fit the rules in the help center, please edit the question.

    
From my experience, what you attempt to implement is virtually impossible. If you want to dive into machine learning, I would recommend choosing an object that is simple to model mathematically and easy to relate to, e.g. a Bandit. –  blubb Mar 24 '14 at 22:22
1  
You've picked a very difficult problem as an introduction to machine learning. I won't say that it's impossible, but automated translation of complex languages is an active field of research that has attracted some of the best minds in the business. You might want to narrow the scope of your problem to start, or find a somewhat easier problem to start with. –  Jim Mischel Mar 25 '14 at 2:52
    
I just discovered this page: en.wikipedia.org/wiki/Category:Programming_language_topics coming from natural language processing and still no clue where this problem might be stated as difficult. There is also this other cateogry: en.wikipedia.org/wiki/… which leads to en.wikipedia.org/wiki/CosmicOS. Search for "machine language of computer language" nothing that directly deal with this specific question. Of course an AI-complete can solve the issue. This doesn't mean there is no simpler solution. –  amirouche Mar 25 '14 at 22:31
    
AI-complete can solve the problem, because a human can. Is there another place I can at least know why this specific problem is diffiult? –  amirouche Mar 25 '14 at 22:35
    
To start with, your tool wouldn't have any knowledge of what the code fragments (A,A') on either side of the translation mean; what's to generalize? It also has no way to partition the corpus examples or a problem instance in fragments, so it can solve subproblems. When all you have is (A,A') and (B,B') as corpus examples, and somebody shows you C, what can you possibly propose is a good guess at what C' might be? Somebody once said, "a machine learner can't learn unless it almost already knows something". What do propose your machine learner already knows? –  Ira Baxter Apr 2 '14 at 21:57