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I have read a lot of tutorials, documents, and codes about implementing LSH:local Sensitivity hashing with Min Hash. LSH tries to find the Jaccard coefficient of two sets by hashing random subsets and aggrating over those. I have looked at likelike in code.google.com but was not able to understand their method as well. I understand the google news paper, but I fail to understand any of the implementations out there. Can someone please explain me in simple words how to implement LSH with MinHash?

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LSH is just a TLA. –  Pascal Cuoq Jan 7 '13 at 21:25
Thanks, I have been reading LSH and Min Hash for three weeks now so my problem lies in detail not a hand wavy explanation like google news paper! –  Majic Johnson Jan 7 '13 at 21:31
What I meant was, perhaps you should define what you means by “LSH”, as the average three-letter acronym has 5 or 6 expansions. –  Pascal Cuoq Jan 7 '13 at 21:34
I have made it more clear Pascal, Thanks! –  Majic Johnson Jan 7 '13 at 23:11

1 Answer 1

up vote 7 down vote accepted

A link to the mentioned paper is missing.

You want to implement the min-hash algorithm but not LSH per se. Min-Hashing is an LSH technique. Thus, LSH in general does not approximate the Jaccard coefficient, the particular method of Min-Hashing does.

An introduction is given in Mining of Massive Dataset, Chapter 3 by Anand Rajaraman and Jeff Ullman.

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