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each user can add its likes with a custom weight.

"I like bananas (7/10) and apples (10/10)"

I'd like to suggest likes to users, based on what other users like.

"You like bananas. You might like apples as well."

The SQL tables have the following structure:

# users
- id
- ... 

# likes
- id
- label (e.g. "apple")
- ...

# user_likes
- id
- user_id
- like_id
- weight

The desired output:

# 1. Suggestions for user ("You probably like apples!")
| like_id | relevance |
-----------------------
| 5       |  0.5      |

# 2. Suggestions for like ("Apples fit to bananas!")
| like_id | relevance |
-----------------------
| 5       |  0.8      |

My current idea would be to loop all the records with PHP, but that can't be right.

Is there any best practise or algorithm for that? Any idea?

Thanks in advance!

Important: I found this and other examples/duplicates to achieve what I need. This question might me detected as a duplicate, but I'm interested in the latest best practice. Many solutions are 10 years old.

2
  • 2
    Any chance you can provide an SQL fiddle with schema and sample data?
    – fubar
    Jul 26, 2018 at 3:08
  • 1
    SQL fiddle for anyone else who wants to have a crack - sqlfiddle.com/#!9/866825/2
    – fubar
    Jul 26, 2018 at 5:10

1 Answer 1

1

This query will find all the likes of other users, who share one or more likes in common with a given user. It will then select the average like weight across those users to determine the relevancy of each like.

SELECT 
    l.*, AVG(ul_3.weight) AS weight
FROM 
    user_likes ul_1
INNER JOIN user_likes ul_2 
    ON ul_1.like_id = ul_2.like_id 
    AND ul_1.user_id <> ul_2.user_id
INNER JOIN user_likes ul_3 
    ON ul_2.user_id = ul_3.user_id
INNER JOIN likes l 
    ON l.id = ul_3.like_id
WHERE 
    ul_1.user_id = 5
    AND l.id <> ul_1.like_id
GROUP BY 
    l.id
ORDER BY
    weight DESC;

Working SQL fiddle with sample data - http://sqlfiddle.com/#!9/866825/2

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