# How to build a simple recommendation system?

How to build a simple recommendation system? I have seen some algorithms but it is so difficult to implement I wish their is practical description to implement the most simple algorithm?

i have these three tables

``````        Users
1            aaa
2            bbb
``````

and

``````        products
productid        productname
1                laptop
2                mobile phone
3                car
``````

and

``````      users_products
userid        productid
1                1
1                3
3                2
2                3
``````

so I want to be able recommend items for each of the users depending on the items they purchased and other users' items

I knew it should something like calculating the similarites between users and then see their prosucts but how can be this done and stored in a database because this will require a table with something like this

``````      1    2   3   4   5   6 << users' ids
1)   1   .4  .2  .3  .8  .4
2)  .3    1  .5  .7  .3  .9
3)  .4   .4   1  .8  .2  .3
4)  .6   .6  .6   1  .4  .2
5)  .8   .7  .4  .2   1  .3
6)   1   .4  .6  .7  .9   1
^
^
users'
ids
``````

so how can similarty beween users calculated? and how could this complex data stored in ad database? (it requires a table with column for every user)? thanks

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How you want to actually store the recommendations is as a question completely unrelated to how one would actually implement a recommendation engine. I leave that to your database architecture. On to the recommending.

You said "simple", so a Pearson correlation coefficient might be the thing you need to read up on.

Calculating such a thing is dead simple. Concept, example code.

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What would X & Y be equivalent to for him? X might be the score each product has, but I can't see what Y would be –  Chris S Jan 31 '09 at 17:44
@JosefAssad- Thanks man and the example code was helpful, and now I am trying to apply this on my database but it seems difficult because I need get each record from the database and apply the algorithm and then store the results into a database table,thanks –  ahmed Jan 31 '09 at 19:34
@Chris- if I am not mistaking (x= a list user 1 choices)(y = a list of user 2 choices)(then the result of the algorithm will be the similarities percentage between user 1 and user 2 choices), I guess :) –  ahmed Jan 31 '09 at 19:37

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The table can be stored in three columns

`user_left` `user_top` `correlation`

(I have no experience with determining correlation, though)

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You most certainly do not need a column for each user. You need a correlation matrix, that is true, but an actual database table is unnecessary. Instead you can imiplement it as

``````table: user_correlation_matrix
columns: user1_id user2_id correlation_factor
``````
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I saw this in one of Joe Celko's books. I believe it's this one Here. I don't have access to mine at the moment. Try heading over to a near by Barnes & Noble or Borders and check it out. I'll dig mine as soon as I have access and follow up.

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