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I'm messing with large source trees from various origins and it brings the following question to my mind: Given two large collections of files how can you choose pairs of files which may have been derived from the same source even though the file location may have changed (within reason)?

I can think of a number of approaches, like maybe this one:

Only consider pairs which are at most 4 directory changes away from each other. For those pairs make a vector for each file (log(size), log(# of caps), log(# of lowercase), log(# of CamelCase), log(# of english words), log(# of numerics), log(# of nonalphanumerics)) -- or something like that -- and probably scale the components based on experience. Then look at pairs where the euclidean distance between the vectors is smallest first.

I don't know if the described heuristic makes sense, but it gives you an idea of the type of thing I'm looking for. Any experience or other ideas out there? Thanks in advance.

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Here is one solution. Break each file into chunks. The chunks could be single lines or sentences or something like that. For each chunk compute the md5 hash. Then create key value pairs of md5 hashes and file names. If two files share many of the same md5 hashes, then they may have been derived from the same source.

There is a lot of research into this problem especially in the domain of web crawling. Here is a link to some papers on the subject. Google Scholar

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