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I have an application that will store and track visitors. These visitors are created in the system by schedulers(users) as needed when they set up a visit. The problem is that most of the time the only important unique identifiers of a visitor are as follows:

  • First Name
  • Last Name
  • Company Name

The risk of duplicate records existing for the same person is inherent, a scheduler may enter a new visitor record in lieu of searching the system for somebody existing by that name.

When I encounter somebody entering a visitor by the same name I display a warning dialog with various suggestions of who this person COULD be, but then even that is not good enough.

I could enter 'Jim Jones' and this person may exist in the system as 'James Jones' or 'Jimmy Jones'. I see there are name recognition software packages available but they are expensive and certainly more heavy than what I am looking for.

Would anybody know where to find a free or open source dictionary file that I can programatically access to find potential name variants? Software or an online service would be nice but even just a data dump or simple text file might do.

I know even this will not prevent duplicate visitor records, I am just trying to keep that at a minimum so it is not a critical feature.

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I want to clarify from the design description above, when I say a scheduler may enter a new visitor record in lieu of searching the system, I mean that behaviour is by design. The user base will be assumed to have minimal computer skills so a clean simple hand-holding flow is necessary. – maple_shaft May 6 '11 at 12:47
up vote 2 down vote accepted

Check out the Moby project (http://icon.shef.ac.uk/Moby/mwords.html) for common first and last names. You can do a precomputation for similar names using tools like metaphone and soundex and use that to identify potential matches. You also mention company names which are a bit harder to manage since they can be made up of lots of things, for that maybe check out the 12-dicts word list (http://wordlist.sourceforge.net/) the 2+2lemma list provided in that package provides multiple forms that share common roots which can be used in conjunction with a simiar spelling solution to provide improved results.

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Thanks for posting, I will check out those links and let you know how that works out. To clarify I am not concerned about searching for Companies. The Company field will not be a search field, but it is displayed to uniquely distinguish two visitors with the exact same name. – maple_shaft May 6 '11 at 12:53
Hmm... having trouble figuring out what to do with the files I unpacked when I downloaded the Moby dictionary. The readme is no help whatsoever. – maple_shaft May 6 '11 at 13:07
Well the Moby dictionary is a start, but not quite what I am looking for. It has an impressive set of names but then I can't really do much without the comparison list. The Metaphone and Soundex algorithms that I tested won't work either because they will only find names that SOUND similar which is not what I am looking for. If my search term is 'William', it should be able to search for variants like 'Bill', 'Billy', 'Will', 'Willy', 'Willie', etc... With a list like that I can easily write a query to find all visitors IN the list of name variants. – maple_shaft May 6 '11 at 13:47
Took a look at some of the other posts linked to the name-matching tag and ran across this deron.meranda.us/data/nicknames.txt not super expansive but better than nothing...going to load it into my translation data-set. – lostatredrock May 6 '11 at 18:54
Here is another one censusdiggins.com/nicknames.htm – lostatredrock May 6 '11 at 19:19

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