Toward Pareto Efficient Fairness-Utility Trade-off in Recommendation through Reinforcement Learning
Yingqiang Ge(Rutgers, The State University of New Jersey), Yongfeng Zhang(China National Petroleum Corporation (China)), Chu-Cheng Hsieh(Ansys (United States)), Diane Hu(Ansys (United States)), Lucia Yu(Ansys (United States)), Xiaoting Zhao(Ansys (United States)), Saurabh Paul(Ansys (United States))
Proceedings of the Fifteenth ACM International Conference on Web Search and Data Mining
February 11, 2022
Cited by 69
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