Accuracy and Diversity in Cross-domain Recommendations for Cold-start Users with Positive-only Feedback

Computing useful recommendations for cold-start users is a major challenge in the design of recommender systems, and additional data is often required to compensate the scarcity of user feedback. In this paper we address such problem in a target domain by exploiting user preferences from a related auxiliary domain. Following a rigorous methodology for cold-start, we evaluate a number of recommendation methods on a dataset with positive-only feedback in the movie and music domains, both in single and cross-domain scenarios. Comparing the methods in terms of item ranking accuracy, diversity and catalog coverage, we show that cross-domain preference data is useful to provide more accurate suggestions when user feedback in the target domain is scarce or not available at all, and may lead to more diverse recommendations depending on the target domain. Moreover, evaluating the impact of the user profile size and diversity in the source domain, we show that, in general, the quality of target recommendations increases with the size of the profile, but may deteriorate with too diverse profiles.

[1]  Tommaso Di Noia,et al.  Top-N recommendations from implicit feedback leveraging linked open data , 2013, IIR.

[2]  Yizhou Sun,et al.  Personalized entity recommendation: a heterogeneous information network approach , 2014, WSDM.

[3]  Guandong Xu,et al.  Personalized recommendation via cross-domain triadic factorization , 2013, WWW.

[4]  Francesco Ricci,et al.  Cold-Start Management with Cross-Domain Collaborative Filtering and Tags , 2013, EC-Web.

[5]  Shaghayegh Sahebi,et al.  It Takes Two to Tango: An Exploration of Domain Pairs for Cross-Domain Collaborative Filtering , 2015, RecSys.

[6]  David M. Pennock,et al.  Categories and Subject Descriptors , 2001 .

[7]  Saul Vargas,et al.  Coverage, redundancy and size-awareness in genre diversity for recommender systems , 2014, RecSys '14.

[8]  Tiffany Ya Tang,et al.  If You Like the Devil Wears Prada the Book, Will You also Enjoy the Devil Wears Prada the Movie? A Study of Cross-Domain Recommendations , 2008, New Generation Computing.

[9]  Joseph A. Konstan,et al.  Evaluating recommender behavior for new users , 2014, RecSys '14.

[10]  Rasoul Karimi,et al.  Active Learning for Recommender Systems , 2015, KI - Künstliche Intelligenz.

[11]  Paolo Tomeo,et al.  Exploiting Linked Open Data in Cold-start Recommendations with Positive-only Feedback , 2016, CERI.

[12]  Paolo Tomeo,et al.  An analysis of users' propensity toward diversity in recommendations , 2014, RecSys '14.

[13]  Yifan Hu,et al.  Collaborative Filtering for Implicit Feedback Datasets , 2008, 2008 Eighth IEEE International Conference on Data Mining.

[14]  Iván Cantador,et al.  Alleviating the new user problem in collaborative filtering by exploiting personality information , 2016, User Modeling and User-Adapted Interaction.

[15]  Roberto Turrin,et al.  Cross-Domain Recommender Systems , 2015, Recommender Systems Handbook.

[16]  Sangkeun Lee,et al.  PathRank: a novel node ranking measure on a heterogeneous graph for recommender systems , 2012, CIKM.