Domokos Miklós Kelen created FLINK-4712:
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             Summary: Implementing ranking predictions for ALS
                 Key: FLINK-4712
                 URL: https://issues.apache.org/jira/browse/FLINK-4712
             Project: Flink
          Issue Type: New Feature
          Components: Machine Learning Library
            Reporter: Domokos Miklós Kelen


We started working on implementing ranking predictions for recommender systems. 
Ranking prediction means that beside predicting scores for user-item pairs, the 
recommender system is able to recommend a top K list for the users.

Details:

In practice, this would mean finding the K items for a particular user with the 
highest predicted rating. It should be possible also to specify whether to 
exclude the already seen items from a particular user's toplist. (See for 
example the 'exclude_known' setting of [Graphlab Create's ranking factorization 
recommender|https://turi.com/products/create/docs/generated/graphlab.recommender.ranking_factorization_recommender.RankingFactorizationRecommender.recommend.html#graphlab.recommender.ranking_factorization_recommender.RankingFactorizationRecommender.recommend].

The output of the topK recommendation function could be in the form of 
DataSet[(Int,Int,Int)], meaning (user, item, rank), similar to Graphlab 
Create's output. However, this is arguable: follow up work includes 
implementing ranking recommendation evaluation metrics (such as precision@k, 
recall@k, ndcg@k), similar to [Spark's 
implementations|https://spark.apache.org/docs/1.5.0/mllib-evaluation-metrics.html#ranking-systems].
 It would be beneficial if we were able to design the API such that it could be 
included in the proposed evaluation framework (see 
[5157|https://issues.apache.org/jira/browse/FLINK-2157]), which makes it 
neccessary to consider the possible output type DataSet[(Int, Array[Int])] or 
DataSet[(Int, Array[(Int,Double)])] meaning (user, array of items), possibly 
including the predicted scores as well. See [issue todo] for details.

Another question arising is whether to provide this function as a member of the 
ALS class, as a switch-kind of parameter to the ALS implementation (meaning the 
model is either a rating or a ranking recommender model) or in some other way.



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