As the title reads, I have a problem with implementing a related articles algorithm. Let me start by listing the tables from the database:
[articles] id_article id_category name content publish_date is_deleted [categories] id_category id_parent name [tags_to_articles] id_tag id_article [tags] id_tag name [articles_to_authors] id_article id_author [authors] id_author name is_deleted [related_articles] id_article_left id_article_right related_score
Every other table except related_articles has data in it. Now i want to fill related_articles with scores between articles (very important: the table will work as an oriented graph, the score of article A with article B could be different than the score between B and A, see the list). The score is computed like this:
- if the two articles in question have the same category, a number(x) is added to the score
- for every author they have in common, a number(y) is added to the score
- for every tag they have in common, a number(z) is added to the score
- if we compute the score of article A with article B, the difference between now() and the publish_date of article B will generate a number(t) that will be subtracted from the score
My first (inefficient) approach
I tried to make a query like this:
SELECT a.id, b.id, a.id_category, a.publish_date, b.id_category, b.publish_date, c.id_tag, e.id_author FROM `articles` a, articles b, tags_to_articles c, tags_to_articles d, articles_to_authors e, articles_to_authors f WHERE a.id_article <> b.id_article AND ( (a.id_article=c.id_article and c.id_tag=d.id_tag and d.id_article=b.id_article) OR (a.id=e.id_article and e.id_author=f.id_author and f.id_article=b.id_article) OR (a.id_category=b.id_category) )
In theory, this would list every element worth computing for score. However, this takes way too much time and resources.
Is there another way? I'm also open to adjusting the algorithm or the tables if it gets a workable solution. Also worth noting is that the score calculations are done in a cron, of course I don't expect this to be running on every page request.