I've been asked to guess the user intention when part of expected data is missing. For example if I'm looking to get
very well or
not very well but I get only
not instead, then I should flag it as
not very well.
The Levenshtein distance for
very well is
9 and the distance for
not very well is
10. I think I'm actually trying to drive a screw with a wrench, but we have already agreed in our team to use Levenshtein for this case.
As you have seen the problem above, is there anyway if I can make some sense out of it by changing the insertion, replacement and deletion costs?
P.S. I'm not looking for a hack for this particular example. I want something that generally works as expected and outputs a better result in these cases also.