I was wondering how can I get some kind of advantage with using fuzzy logic in my recommender system?
My system basically calculates similarity between users by:
- tanimoto coefficient
- cosinus distance
- discrete distance
Then all the similarities are combined into one that measures from 0 to 1. So we can get similar users for user 1 and then recommend him goods that were bought by users who are similar to him.
I understand the basics of fuzzy theory, just can't think of any usage in here, but want to try Would like to hear any thoughts on this.