Controlling Popularity Bias in Learning-to-Rank Recommendation

Many recommendation algorithms suffer from popularity bias in their output: popular items are recommended frequently and less popular ones rarely, if at all. However, less popular, long-tail items are precisely those that are often desirable recommendations. In this paper, we introduce a flexible regularization-based framework to enhance the long-tail coverage of recommendation lists in a learning-to-rank algorithm. We show that regularization provides a tunable mechanism for controlling the trade-off between accuracy and coverage. Moreover, the experimental results using two data sets show that it is possible to improve coverage of long tail items without substantial loss of ranking performance.

[1]  Lars Schmidt-Thieme,et al.  BPR: Bayesian Personalized Ranking from Implicit Feedback , 2009, UAI.

[2]  Guy Shani,et al.  Evaluating Recommendation Systems , 2011, Recommender Systems Handbook.

[3]  Michael Jahrer,et al.  Collaborative Filtering Ensemble , 2012, KDD Cup.

[4]  Yu Jeffrey Hu,et al.  From Niches to Riches: Anatomy of the Long Tail , 2006 .

[5]  Bamshad Mobasher,et al.  Recommender Systems as Multistakeholder Environments , 2017, UMAP.

[6]  Chris Anderson,et al.  The Long Tail: Why the Future of Business is Selling Less of More , 2006 .

[7]  Sean A. Munson,et al.  Bursting your (filter) bubble: strategies for promoting diverse exposure , 2013, CSCW '13.

[8]  Robin D. Burke,et al.  Educational Recommendation with Multiple Stakeholders , 2016, 2016 IEEE/WIC/ACM International Conference on Web Intelligence Workshops (WIW).

[9]  Neil J. Hurley,et al.  Incorporating Diversity in a Learning to Rank Recommender System , 2016, FLAIRS.

[10]  Neil Yorke-Smith,et al.  LibRec: A Java Library for Recommender Systems , 2015, UMAP Workshops.

[11]  Bamshad Mobasher,et al.  Towards Multi-Stakeholder Utility Evaluation of Recommender Systems , 2016, UMAP.

[12]  Yehuda Koren,et al.  Advances in Collaborative Filtering , 2011, Recommender Systems Handbook.

[13]  Alexander Tuzhilin,et al.  The long tail of recommender systems and how to leverage it , 2008, RecSys '08.

[14]  Pedro Cano,et al.  From hits to niches?: or how popular artists can bias music recommendation and discovery , 2008, NETFLIX '08.

[15]  Domonkos Tikk,et al.  Alternating least squares for personalized ranking , 2012, RecSys.

[16]  Paolo Avesani,et al.  Trust-aware recommender systems , 2007, RecSys '07.

[17]  Loren G. Terveen,et al.  Exploring the filter bubble: the effect of using recommender systems on content diversity , 2014, WWW.

[18]  F. Maxwell Harper,et al.  The MovieLens Datasets: History and Context , 2016, TIIS.