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I’m having a crack at profanity filtering for a web forum written in Python.

As part of that, I’m attempting to write a function that takes a word, and returns all possible mock spellings of that word that use visually similar characters in place of specific letters (e.g. s†å©køv€rƒ|øw).

I expect I’ll have to expand this list over time to cover people’s creativity, but is there a list floating around anywhere on the internet that I could use as a starting point?

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I can't answer the question, but I wouldn't use a function that returns all possible mock spellings of a word. That can be awfully many. Instead, I'd normalize each word in the posts before looking it up in the list of bad words, i.e. transform "s†å©køv€rƒ|øw" to "stackoverflow" before the look-up. – Sven Marnach Feb 29 '12 at 0:24
Related but not exact duplicate:… – Ben Jackson Feb 29 '12 at 0:32
@PaulD.Waite: No, I won't. It doesn't solve the problem, it's rather a side note. You will still need data on the character mapping, which is the main issue here. (And I think your question is perfectly valid and on-topic.) – Sven Marnach Feb 29 '12 at 0:43
There are scripts and programs that leetify a word (toggle case and replace o with zero, 3 with e, etc. I'd start by looking at those. – 01100110 Feb 29 '12 at 1:15
this idea just sprang to my mind - it's neither analysed thoroughly nor tested in any way. however, how about 1. choose a font 2. create bitmap renderings of all glyphs 3. define a similarity measure over bitmaps (simple one: proportion of equal vs. different bit values over all grid positions inside a std bounding box). 4. compute the similarity matrix for pairs of chars 5. cluster the glyphs accordingly 6. choose a rep for each cluster (ideally these would come out as a-zA-Z0-9). then filtering would amount to mapping each char onto the proper cluster rep and a dict lookup. – collapsar Mar 1 '12 at 14:21
up vote 19 down vote accepted

This is probably both vastly more deep than you need, yet not wide enough to cover your use case, but the Unicode consortium have had to deal with attacks against internationalised domain names and came up with this list of homographs (characters with the same or similar rendering):

Might make a starting point at least.

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That looks great, good show. – Paul D. Waite Apr 9 '12 at 21:41

It's much much much less comprehensive but is more comprehensible.

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