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I am trying to use ALS, but currently my data is limited to information about what user bought. So I was trying to fill ALS from Apache Spark with Ratings equal 1 (one) when user X bought item Y (and only such information I provided to that algorithm).

I was trying to learn it (divided data to train/test/validation) or was trying just to learn on all data but at the end I was getting prediction with extremely similar values for any pair user-item (values differentiated on 5th or 6th place after comma like 0,86001 and 0,86002).

I was thinking about that and maybe it is because I can provide only rating equal 1 so does ALS cannot be used in such extreme situation?

Is there any trick with ratings so I could use to fix such problem (I have only information's about what was bought - later I am going to get more data, but at a moment I have to use some kind of collaborative filtering until I will acquire more data - in other words I need to show user some kind of recommendation on startup page I choose ALS for startup page but maybe I use something else, what exactly)?

Ofcourse I was changing parameters like iterations, lambda, rank.

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In this case, the key is that you must use trainImplicit, which ignores Rating's value. Otherwise you're asking it to predict ratings in a world where everyone rates everything 1. The right answer is invariably 1, so all your answers are similar.

  • Thanks Sean I will check this and provide information how it works – Adrian Feb 11 '15 at 21:42
  • Did fast check and it is working a lot better. – Adrian Feb 12 '15 at 3:34
  • I got RMSE somewhere close to 0.193 for very naive training (all data was in train and in test). In addition predictions differentiate and at a moment it looks that it is founding proper relations. What is for me interesting is that I got a lot better RMSE with high alpha - like 10 or 50. Thanks very much for help! – Adrian Feb 12 '15 at 3:49
  • You can't really use RMSE in this case. That's not what it is minimizing. – Sean Owen Feb 12 '15 at 7:36
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    The output is not a probability, if that's what you mean. The values are generally in [0,1] but not always. You can use a metric like AUC to evaluate the model. Hyperparameter tuning is usually a matter of just trying lots of combinations. Ad: we wrote a book on lots of use cases like this with MLlib, including hyperparam tuning with ALS. shop.oreilly.com/product/0636920035091.do – Sean Owen Feb 12 '15 at 13:36

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