Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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.

share|improve this question

5 Answers 5

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

Articles:

  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
share|improve this answer
    
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

share|improve this answer
    
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 –  adi92 Mar 31 '10 at 15:58

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

share|improve this answer

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

share|improve this answer

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.

share|improve this answer
    
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

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.