This isn't a SQL Server specific question; but there might be tSQL specific options here.
I've got a bunch of customer details; many of them cancel and resign up for their service. They get an entirely new account; and our datavalidation is sketchy at best; so they often mistype email addresses or other data.
The question is in two parts:
First; I've got info such as first and last name, email, last 4 of credit card, postal code, phone number. Is there an algorithm/process I can look at my dataset with and look for common pools of repetition so I can determine some manual characteristics of the data that tend to be 'gotcha' items for repeat customers -- i.e. 80% of the time the emails were 'similar' and the zip code was the same, it was a repeat customer (based upon my human matching skills)?
Second; How might I go about expressing similarity between sets of data --- i.e. have an item called a match if 3 of the 5 fields match? Some sort of similiarity index between all the different data points? I know I can use soundex to some extent on the names... not so sure on email addresses.
So, I'm interested in both quick and dirty solutions (I'm whipping together an analysis tonight; but I'm also very interested in the 'right' ways of going to tackle this problem.) Both answers will earn my love and respect. =)