When I found out that the python regex module allows fuzzy matching I was increasingly happy as it seemed as a simple solution to many of my problems. But now I am having a problem for which I did ...
I'm using the "fuzzy match" functionality of the Regex module. How can I get the "fuzziness value" of a "match" which indicates how different the pattern is to the string, just like the "edit ...
I'm writing a Python chatbot. No matter what the technique is(Levenshtein, LCS, regex, etc.), I want a pattern like My name is [ A ]. smart enough to match strings like: My name is Tslmy. ...
I am looking for a way to do a fuzzy match using regular expressions. I'd like to use Perl, but if someone can recommend any way to do this that would be helpful. As an example, I want to match a ...
What logic to use to rollup/merge multiple person entities as the same? (tight, but fuzzy enough to broaden matches)
I have multiple instances of people entities which are often times the same person. Where the address First-Last is the same at the same address, it's a no-brainer to merge/rollup them. However, due ...
In my work I have with great results used approximate string matching algorithms such as Damerau–Levenshtein distance to make my code less vulnerable to spelling mistakes. Now I have a need to match ...