# Advice me on the alogorithm to match people

Currently i am working on a project where i need to match people based on the categories of food they like:

This is the scenario:

I have a list of USERS and their favorite foods in my database. The database structure is as follows:

``````USERS(id,name,email,gender,dob)
Fav_Food (id,user_name,food,desc)
``````

Data for users table:

1, Alice, alice@lala.com, female, 11 Oct 2010

2, Bob, bob@lala.com, male, 12 Oct 2010

3, Jason, jason@lala.com, male, 13 Oct 2010

Data for fav_foods table:

1, Alice, apple, some desc

2, Alice, banana, some desc

3, Alice, Pear, some desc

4, Bob, apple, some desc

5, Bob, custard cake, some desc

6, Jason, banana,some desc

6,Jason,apple,some desc

Imagine that i am Alice where i like apple,banana & pear. How would i be able to match people based on the favorite food? For example, i first check if anyone likes apple,banana and pear (inclusive of all three) and than go with the permutation of only two combination `(apple,banana)(apple,pear)(banana,pear)(banana,apple)` ....and so on.....

Imagine it like a Venn diagram where the interaction is what i am interested. I am interested to suggest users with the most matched. Is there any algorithm available that i can use for php?

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Look into the "Jaccard coefficient", with which you can measure the similarity of two given things. –  deceze Oct 11 '11 at 9:13
i am reading it but have no idea how could that work with a list of data ...hmmmmm –  madi Oct 11 '11 at 9:28

what you could do is join the fav_foods table to itself and then count the matches:

``````SELECT u2.user_name,count(*) as likeness
FROM `fav_food` as u1 INNER JOIN `fav_food` as u2 ON (u1.user_name = 'alice' AND
u1.food = u2.food AND
u2.user_name != "alice")
GROUP BY u2.user_name
ORDER BY likeness DESC
``````

it will output:

``````user_name   likeness
jason       2
bob         1
``````

the trick is on the conditions of the inner join... =)

Hope this helps

EDITED: oops i corrected the query =)

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You could take a look into Matching within Bipartite Graphs, but I doubt if this is the most efficient algorithm to use.

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