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I need help designing an algorithm for recommendations on movies.

Every user in the system grades movies on a score between 1-100.

Tables consist of:

Table Movies
ID    Name    Year    Rating    Runtime

Table Con_MoviesToGenres
MovieID    GenreID

Table Con_MovieToUser
MovieID    UserID    Grade

I'm trying to build a SELECT query to return 5 most recommended movies for a specific movie.

Bearing in mind, I want to integrate in some way, similar genres, highest grades & movie Rating (so you want be recommended an R rated movie for a PG rated movie, unless it's really recommended in every other aspect). Also, if movie matches more than one genre, it will increase its recommendation ratio.

Bonus: If a user gives a low grade to a movie -> it will lose recommendation ratio.

Update: I meant for one user and one title. Whenever a user enters a "movie page" - he will get recommendations for other movies he might like.

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up vote 4 down vote accepted

You are late the contest is over.

But its fun.

You will have to look into some fancy math (oh I love all this)

  1. Linear Algebra
  2. Statistics
  3. Artificial Intelligence
  4. Graph Theory


  1. Item-based Collaborative Filtering Recommendation Algorithms (1424 citations)
  2. TANGENT: A Novel, “Surprise-me”, Recommendation Algorithm
  3. What is a Good Recommendation Algorithm? - HackerNews
  4. Tony Phillips' Take on Math in the Media
  5. We Recommend a Singular Value Decomposition
  6. Netflix prize tribute: Recommendation algorithm in Python
  7. Studying Recommendation Algorithms by Graph Analysis
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ahhhhhhhhhhhhhhhhhhhhhhhhhh – Faruz Mar 31 '10 at 9:35
This is complicated, I know, but I never said it wasn't. (this line is stolon;) – Pratik Deoghare Mar 31 '10 at 9:59

If User A and User B have seen 10 movies in common, and there is a high positive correlation between their ratings (implying they both have similar opinions about movies), you could then take a movie which User B has given a high rating to and recommend it to User A.

To do something like this, maybe you could precompute an extra table which maps User X and User Y to the number of movies they have seen in common and the Pearson's correlation between their ratings

When a user asks for a recommendation you could use this table to find a highly correlated user, and then recommend something he has seen and liked which this person hasn't

For situations when a user doesn't have enough common users with anybody else, you could fall back to recommending the highest rated movie overall which the user hasn't seen

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But if both seen the same movies, but user B really disliked them while user A loved them? – Faruz Mar 31 '10 at 9:37
then their correlation would be lower and you might pick somebody else instead of User B, to find a movie for User A – Aditya Mukherji Mar 31 '10 at 15:58

This has to be done on an atomic level: calculate recommendations for one title OR user at a time.

There is no way you can fit all the details in a SQL query. This has to be done is real code.

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I meant for one user and one title. Whenever a user enters a "movie page" - he will get recommendations for other movies he might like. – Faruz Mar 31 '10 at 8:46
Good for you. My answer is still the same. – Amy B Mar 31 '10 at 8:54

Might not be relevant to SQL, but if you like python, there is some tutorial on this topic in a book called Collective Intelligence

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You might want to check out the NetFlix competition. Found an article about it here. May at least give you some good ideas...

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