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Courses on Deep Reinforcement Learning (DRL) and DRL papers for recommender systems

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Deep Reinforcement Learning for Recommender Systems

Courses on Deep Reinforcement Learning (DRL) and DRL papers for recommender system

Courses

UCL Course on RL

http://www0.cs.ucl.ac.uk/staff/d.silver/web/Teaching.html

CS 294-112 at UC Berkeley

http://rail.eecs.berkeley.edu/deeprlcourse/

Stanford CS234: Reinforcement Learning

http://web.stanford.edu/class/cs234/index.html

Book

  1. Reinforcement Learning: An Introduction (Second Edition). Richard S. Sutton and Andrew G. Barto. book

Papers

Survey Papers

  1. A Brief Survey of Deep Reinforcement Learning. Kai Arulkumaran, Marc Peter Deisenroth, Miles Brundage, Anil Anthony Bharath. 2017. paper
  2. Deep Reinforcement Learing: An Overview. Yuxi Li. 2017. paper

Conference Papers

  1. An MDP-Based Recommender System. Guy Shani, David Heckerman, Ronen I. Brafman. JMLR 2005. paper
  2. Usage-Based Web Recommendations: A Reinforcement Learning Approach. Nima Taghipour, Ahmad Kardan, Saeed Shiry Ghidary. Recsys 2007. paper
  3. DJ-MC: A Reinforcement-Learning Agent for Music Playlist Recommendation. Elad Liebman, Maytal Saar-Tsechansky, Peter Stone. AAMAS 2015. paper
  4. Learning to Collaborate: Multi-Scenario Ranking via Multi-Agent Reinforcement Learning. Jun Feng, Heng Li, Minlie Huang, Shichen Liu, Wenwu Ou, Zhirong Wang, Xiaoyan Zhu. WWW 2018. paper
  5. Reinforcement Mechanism Design for e-commerce. Qingpeng Cai, Aris Filos-Ratsikas, Pingzhong Tang, Yiwei Zhang. WWW 2018. paper
  6. DRN: A Deep Reinforcement Learning Framework for News Recommendation. Guanjie Zheng, Fuzheng Zhang, Zihan Zheng, Yang Xiang, Nicholas Jing Yuan, Xing Xie, Zhenhui Li. WWW 2018. paper
  7. Deep Reinforcement Learning for Page-wise Recommendations. Xiangyu Zhao, Long Xia, Liang Zhang, Zhuoye Ding, Dawei Yin, Jiliang Tang. RecSys 2018. paper
  8. Recommendations with Negative Feedback via Pairwise Deep Reinforcement Learning. Xiangyu Zhao, Liang Zhang, Zhuoye Ding, Long Xia, Jiliang Tang, Dawei Yin. KDD 2018. paper
  9. Stabilizing Reinforcement Learning in Dynamic Environment with Application to Online Recommendation. Shi-Yong Chen, Yang Yu, Qing Da, Jun Tan, Hai-Kuan Huang, Hai-Hong Tang. KDD 2018. paper
  10. Reinforcement Learning to Rank in E-Commerce Search Engine: Formalization, Analysis, and Application. Yujing Hu, Qing Da, Anxiang Zeng, Yang Yu, Yinghui Xu. KDD 2018. paper
  11. A Reinforcement Learning Framework for Explainable Recommendation. Xiting Wang, Yiru Chen, Jie Yang, Le Wu, Zhengtao Wu, Xing Xie. ICDM 2018. paper
  12. Top-K Off-Policy Correction for a REINFORCE Recommender System. Minmin Chen, Alex Beutel, Paul Covington, Sagar Jain, Francois Belletti, Ed H. Chi. WSDM 2019. paper
  13. Generative Adversarial User Model for Reinforcement Learning Based Recommendation System. Xinshi Chen, Shuang Li, Hui Li, Shaohua Jiang, Yuan Qi, Le Song. ICML 2019. paper
  14. Aggregating E-commerce Search Results from Heterogeneous Sources via Hierarchical Reinforcement Learning. Ryuichi Takanobu, Tao Zhuang, Minlie Huang, Jun Feng, Haihong Tang, Bo Zheng. WWW 2019. paper
  15. Policy Gradients for Contextual Recommendations. Feiyang Pan, Qingpeng Cai, Pingzhong Tang, Fuzhen Zhuang, Qing He. WWW 2019. paper
  16. Reinforcement Knowledge Graph Reasoning for Explainable Recommendation. Yikun Xian, Zuohui Fu, S. Muthukrishnan, Gerard de Melo, Yongfeng Zhang. SIGIR 2019. paper
  17. Reinforcement Learning to Optimize Long-term User Engagement in Recommender Systems. Lixin Zou, Long Xia, Zhuoye Ding, Jiaxing Song, Weidong Liu, Dawei Yin. KDD 2019. paper
  18. Environment reconstruction with hidden confounders for reinforcement learning based recommendation. Wenjie Shang, Yang Yu, Qingyang Li, Zhiwei Qin, Yiping Meng, Jieping Ye. KDD 2019. paper
  19. Exact-K Recommendation via Maximal Clique Optimization. Yu Gong, Yu Zhu, Lu Duan, Qingwen Liu, Ziyu Guan, Fei Sun, Wenwu Ou, Kenny Q. Zhu. KDD 2019. paper
  20. Hierarchical Reinforcement Learning for Course Recommendation in MOOCs. Jing Zhang, Bowen Hao, Bo Chen, Cuiping Li, Hong Chen, Jimeng Sun. AAAI 2019. paper
  21. Large-scale Interactive Recommendation with Tree-structured Policy Gradient. Haokun Chen, Xinyi Dai, Han Cai, Weinan Zhang, Xuejian Wang, Ruiming Tang, Yuzhou Zhang, Yong Yu. AAAI 2019. paper
  22. Virtual-Taobao: Virtualizing real-world online retail environment for reinforcement learning. Jing-Cheng Shi, Yang Yu, Qing Da, Shi-Yong Chen, An-Xiang Zeng. AAAI 2019. paper
  23. A Model-Based Reinforcement Learning with Adversarial Training for Online Recommendation. Xueying Bai, Jian Guan, Hongning Wang. NeurIPS 2019. paper
  24. Text-Based Interactive Recommendation via Constraint-Augmented Reinforcement Learning. Ruiyi Zhang, Tong Yu, Yilin Shen, Hongxia Jin, Changyou Chen, Lawrence Carin. NeurIPS 2019. paper
  25. DRCGR: Deep reinforcement learning framework incorporating CNN and GAN-based for interactive recommendation. Rong Gao, Haifeng Xia, Jing Li, Donghua Liu, Shuai Chen, and Gang Chun. ICDM 2019. paper
  26. Pseudo Dyna-Q: A Reinforcement Learning Framework for Interactive Recommendation. Lixin Zou, Long Xia, Pan Du, Zhuo Zhang, Ting Bai, Weidong Liu, Jian-Yun Nie, Dawei Yin. WSDM 2020. paper
  27. End-to-End Deep Reinforcement Learning based Recommendation with Supervised Embedding. Feng Liu, Huifeng Guo, Xutao Li, Ruiming Tang, Yunming Ye, Xiuqiang He. WSDM 2020. paper

Preprint Papers

  1. Reinforcement Learning based Recommender System using Biclustering Technique. Sungwoon Choi, Heonseok Ha, Uiwon Hwang, Chanju Kim, Jung-Woo Ha, Sungroh Yoon. arxiv 2018. paper
  2. Deep Reinforcement Learning based Recommendation with Explicit User-Item Interactions Modeling. Feng Liu, Ruiming Tang, Xutao Li, Weinan Zhang, Yunming Ye, Haokun Chen, Huifeng Guo, Yuzhou Zhang. arxiv 2018. paper
  3. Model-Based Reinforcement Learning for Whole-Chain Recommendations. Xiangyu Zhao, Long Xia, Yihong Zhao, Dawei Yin, Jiliang Tang. arxiv 2019. paper

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Courses on Deep Reinforcement Learning (DRL) and DRL papers for recommender systems