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2010 IEEE International Conference on Data Mining
Learning Attribute-to-Feature Mappings for Cold-Start Recommendations
Sydney, Australia
December 13-December 17
ISBN: 978-0-7695-4256-0
Cold-start scenarios in recommender systems are situations in which no prior events, like ratings or clicks, are known for certain users or items. To compute predictions in such cases, additional information about users (user attributes, e.g. gender, age, geographical location, occupation) and items (item attributes, e.g. genres, product categories, keywords) must be used. We describe a method that maps such entity (e.g. user or item) attributes to the latent features of a matrix (or higher-dimensional) factorization model. With such mappings, the factors of a MF model trained by standard techniques can be applied to the new-user and the new-item problem, while retaining its advantages, in particular speed and predictive accuracy. We use the mapping concept to construct an attribute-aware matrix factorization model for item recommendation from implicit, positive-only feedback. Experiments on the new-item problem show that this approach provides good predictive accuracy, while the prediction time only grows by a constant factor.
Index Terms:
collaborative filtering, cold-start, matrix factorization, factorization models, long tail, recommender systems
Citation:
Zeno Gantner, Lucas Drumond, Christoph Freudenthaler, Steffen Rendle, Lars Schmidt-Thieme, "Learning Attribute-to-Feature Mappings for Cold-Start Recommendations," icdm, pp.176-185, 2010 IEEE International Conference on Data Mining, 2010
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