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I would like to ask a little attention to this challenge.

My intention is to find some solution to develop within the system.

In the business of my company (civil engineering) I have the following scenario:

We have the elements / materials registered in our database but our thousands of suppliers have the same elements / materials with different names but similar.

So I have a list of elements (e.g. cement) that came from an invoice through an XML.

On the other hand I have the same type of element registered in my database but with different name (in most case they are almost equal) and I want to find out in the invoice list which is more like comparing their names.

Is there any similar to the Bayesian algorithm in which I could compare the names and have a value between '0' and '1'? Where '1' would be 100% identical characters.

Example (I will change the type of elements for fruits):

If i have to compare: raspberry

Invoice List - Values of Algortim
 strawberry ........ 0,89
 blueberry ......... 0,77
 cherry ............ 0,46
 grape ............. 0,11
 raspberry ......... 1,00
 pineapple ......... 0,13

The important is to find out the closest name when I do not have a perfect combination.

There are other techniques?

Would be a pleasure to see what you guys have in mind!

share|improve this question
I'm trying ... I just need to accept the answer? Thank you for that! – Gustavo Melo Jul 18 '12 at 13:20
up vote 6 down vote accepted

I am not sure I am completely following - but if you are looking for a way to compute how two strings are similar to each other, you could try Levenshtein Distance, it is often used for these purposes.

You can later normalize the result to get it in the range you desire, for example a simple normalization will be:

normalized_distance(u,v) =               ----------------
                              max{distance(x,v) | for each x in the collection }
share|improve this answer
Thanks Amit, this is PERFECT ! – Gustavo Melo Jul 18 '12 at 14:08
Like they were saying in the question comments, instead of writing a "thanks" comment, please accept the answer. – Matthew Adams Jul 18 '12 at 18:50
@MatthewAdams i accepted (UP THE ARROW) every answer and comments here in this page but i still remain on 17% =( – Gustavo Melo Jul 18 '12 at 20:00
How dumb I am... only now I saw the icon to accept Sorry guys and thank you again... – Gustavo Melo Jul 18 '12 at 20:00

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