Collaborative Ranking With 17 Parameters

Volkovs, Maksims, Zemel, Richard S.

Neural Information Processing Systems 

The primary application of collaborate filtering (CF) is to recommend a small set of items to a user, which entails ranking. Most approaches, however, formulate the CF problem as rating prediction, overlooking the ranking perspective. In this work we present a method for collaborative ranking that leverages the strengths of the two main CF approaches, neighborhood-and model-based. Our novel method is highly efficient, with only seventeen parameters to optimize and a single hyperparameter totune, and beats the state-of-the-art collaborative ranking methods. We also show that parameters learned on datasets from one item domain yield excellent resultson a dataset from very different item domain, without any retraining.

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