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?