Beyond Parity: Fairness Objectives for Collaborative Filtering

We study fairness in collaborative-filtering recommender systems, which are sensitive to discrimination that exists in historical data. Biased data can lead collaborative-filtering methods to make unfair predictions for users from minority groups. We identify the insufficiency of existing fairness metrics and propose four new metrics that address different forms of unfairness. These fairness metrics can be optimized by adding fairness terms to the learning objective. Experiments on synthetic and real data show that our new metrics can better measure fairness than the baseline, and that the fairness objectives effectively help reduce unfairness.

[1]  Richard S. Zemel,et al.  Collaborative prediction and ranking with non-random missing data , 2009, RecSys '09.

[2]  Mehrbakhsh Nilashi,et al.  Collaborative filtering recommender systems , 2013 .

[3]  Kristian Lum,et al.  A statistical framework for fair predictive algorithms , 2016, ArXiv.

[4]  Paul J. Andrisani,et al.  Job Preferences, College Major, and the Gender Gap in Earnings , 1984 .

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

[6]  John R. Anderson,et al.  Beyond Globally Optimal: Focused Learning for Improved Recommendations , 2017, WWW.

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

[8]  Shotaro Akaho,et al.  Model-Based Approaches for Independence-Enhanced Recommendation , 2016, 2016 IEEE 16th International Conference on Data Mining Workshops (ICDMW).

[9]  P. Holland,et al.  Local Structure in Social Networks , 1976 .

[10]  Franco Turini,et al.  Discrimination-aware data mining , 2008, KDD.

[11]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[12]  Krishna P. Gummadi,et al.  Fairness Constraints: Mechanisms for Fair Classification , 2015, AISTATS.

[13]  Amanda L. Griffith,et al.  Persistence of Women and Minorities in STEM Field Majors: Is it the School That Matters? , 2010 .

[14]  Nathan Srebro,et al.  Equality of Opportunity in Supervised Learning , 2016, NIPS.

[15]  Alvaro Ortigosa,et al.  Recommendation in Higher Education Using Data Mining Techniques , 2009, EDM.

[16]  David N. Beede,et al.  Women in STEM: A Gender Gap to Innovation , 2011 .

[17]  P. Ersonality,et al.  Assessing The Impact Of Gender And Personality On Film Preferences , 2010 .

[18]  Jun Sakuma,et al.  Enhancement of the Neutrality in Recommendation , 2012, Decisions@RecSys.

[19]  Emma Smith,et al.  Women into science and engineering? Gendered participation in higher education STEM subjects , 2011 .

[20]  Richard S. Zemel,et al.  Collaborative Filtering and the Missing at Random Assumption , 2007, UAI.

[21]  Frederick R. Forst,et al.  On robust estimation of the location parameter , 1980 .

[22]  Lars Schmidt-Thieme,et al.  Recommender system for predicting student performance , 2010, RecSysTEL@RecSys.

[23]  Toniann Pitassi,et al.  Learning Fair Representations , 2013, ICML.

[24]  Jun Sakuma,et al.  Fairness-aware Learning through Regularization Approach , 2011, 2011 IEEE 11th International Conference on Data Mining Workshops.

[25]  S. Broad,et al.  Recruiting Women into Computer Science and Information Systems. , 2014 .

[26]  Jun Sakuma,et al.  Correcting Popularity Bias by Enhancing Recommendation Neutrality , 2014, RecSys Posters.

[27]  Patricia Ordóñez de Pablos,et al.  Educational recommender systems and their application in lifelong learning , 2016, Behav. Inf. Technol..

[28]  Yehuda Koren,et al.  Matrix Factorization Techniques for Recommender Systems , 2009, Computer.