I'm trying out the Collaborative Filtering algorithm implemented in Spark and am running into the following issue:

Suppose I train a model with the following data:

u1|p1|3
u1|p2|3
u2|p1|2
u2|p2|3

Now if I test it with the following data:

u1|p1|1
u3|p1|2
u3|p2|3

I never see any ratings for the user 'u3', presumably because that user does not appear in the training data. Is this because of the cold start issue? I was under the impression that this issue would apply only to a new product. In this case, I would have expected a prediction for 'u3' since 'u1' and 'u2' in the training data have similar rating information to 'u3'. Is this the distinction between model-based and memory-based collaborative filtering?

  • were you able to train with user and product as non-Integers? When I try to train in that format I get the error stating: Rating, (int(self.user), int(self.product), float(self.rating)) – jKraut Feb 16 '16 at 17:01
  • Looks like we hit similar problems: how to predict for new users without having to retrain the whole model? – Brian Risk Jul 5 '16 at 18:38
up vote 1 down vote accepted

I assume you are talking about the ALS algorithm?

'u3' is not pair of your training set and therefore your model does not know anything about that user. All one could to is maybe return the mean rating over all users.

Looking into the Spark 1.3.0 Scala code: The MatrixFactorizationModel returned by ALS.train() tries to lookup user and product in the feature vectors when you call predict(). I get a NoSuchElementException when I try to predict a rating of an unknown user. It is just implemented that way.

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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