# most efficient way to group search results by string similarity

I am working on a sql server 2008 DB and asp.net mvc web E-commerce app.

I have different users feeding their products to the DB, and I want to compare the prices of products with similar names. I know that string matching is domain specific, but I still need the best generic solution.

What is the most efficient way to group the search results? Should I compare each of the records recursively using the Levenshtien Distance algorithm? Should I do it in the DB, or in the code? Is there a way to implement SSIS Fuzzy Grouping in real time for this task? Is there an efficient way to do it using the Sql server 2008 free text search?

Edit 1: What about network-graph analysis. If I'll define a matrix using the Levenshtien Distance algorithm, I could use a clustering algorithm (for example: clauset newman moore) and seperate groups that don't have phonological path between them. I have attached Nick Johnson (see comment) cat-dog for example (the red lines are the clusters) - and by using the clauset newman moore I am creating 2 different clusters and seperating cats from dogs.

What do you think?

• I would do it in the DB, see this thread: sqlteam.com/forums/topic.asp?TOPIC_ID=66781 and this: stackoverflow.com/questions/560709/… on the Levenshtein distance alg. – Magnus Mar 29 '12 at 10:10
• This is tough - how would you group the products 'cat', 'car', 'bar', 'bag', 'bog', 'dog'? Each is only distance 1 from each other, but 'cat' and 'dog' share no similarities. – Nick Johnson Mar 29 '12 at 11:41
• So what is the alternative? Maybe some kind of semantic dictionary? any other ideas? – Gidon Mar 29 '12 at 22:34
• @NickJohnson: Well... cat and car have distance 1. car and bar have distance 1 too. But this says that cat and bar have distance 2 and not 1. You have to make to hops from cat to bar, don't you? And 5 from cat to dog. So they are quite far apart. Although adding other words in the graph would end up that cat and dog are only 3 steps apart... – Robert Koritnik Mar 30 '12 at 14:36
• @RobertKoritnik So what clusters would you separate that set of words into, and why? (Also, note the edit distance from 'cat' to 'dog' is 3. :)) – Nick Johnson Mar 30 '12 at 15:25