Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
10.1145/3539597.3570374acmconferencesArticle/Chapter ViewAbstractPublication PageswsdmConference Proceedingsconference-collections
research-article

Learning to Distinguish Multi-User Coupling Behaviors for TV Recommendation

Published: 27 February 2023 Publication History

Abstract

This paper is concerned with TV recommendation, where one major challenge is the coupling behavior issue that the behaviors of multiple users are coupled together and not directly distinguishable because the users share the same account. Unable to identify the current watching user and use the coupling behaviors directly could lead to sub-optimal recommendation results due to the noise introduced by the behaviors of other users. Most existing methods deal with this issue either by unsupervised clustering algorithms or depending on latent user representation learning with strong assumptions. However, they neglect to sophisticatedly model the current session behaviors, which carry the information of user identification. Another critical limitation of the existing models is the lack of supervision signal on distinguishing behaviors because they solely depend on the final click label, which is insufficient to provide effective supervision. To address the above problems, we propose the Coupling Sequence Model (COSMO) for TV recommendation. In COSMO, we design a session-aware co-attention mechanism that uses both the candidate item and session behaviors as the query to attend to the historical behaviors in a fine-grained manner. Furthermore, we propose to use the data of accounts with multiple devices (e.g., families with various TV sets), which means the behaviors of one account are generated on different devices. We regard the device information as weak supervision and propose a novel pair-wise attention loss for learning to distinguish the coupling behaviors. Extensive offline experiments and online A/B tests over a commercial TV service provider demonstrate the efficacy of COSMO compared to the existing models.

Supplementary Material

MP4 File (WSDM23-fp0056.mp4)
The introduction video of "Learning to Distinguish Multi-User Coupling Behaviors for TV Recommendation"
MP4 File (26_wsdm2023_zhu_coupling_behaviors_01.mp4-streaming.mp4)
Learning to Distinguish Multi-User Coupling Behaviors for TV Recommendation

References

[1]
Michal Aharon, Eshcar Hillel, Amit Kagian, Ronny Lempel, Hayim Makabee, and Raz Nissim. 2015. Watch-it-next: a contextual TV recommendation system. In ECML-PKDD. Springer, 180--195.
[2]
Iftikhar Alam, Shah Khusro, and Mumtaz Khan. 2021. Personalized content recommendations on smart TV: challenges, opportunities, and future research directions. Entertainment Computing, Vol. 38 (2021), 100418.
[3]
Sihem Amer-Yahia, Senjuti Basu Roy, Ashish Chawlat, Gautam Das, and Cong Yu. 2009. Group recommendation: Semantics and efficiency. VLDB Endowment.
[4]
Qiwei Chen, Huan Zhao, Wei Li, Pipei Huang, and Wenwu Ou. 2019. Behavior sequence transformer for e-commerce recommendation in alibaba. In DLP-KDD.
[5]
Shi-Yong Chen, Yang Yu, Qing Da, Jun Tan, Hai-Kuan Huang, and Hai-Hong Tang. 2018. Stabilizing reinforcement learning in dynamic environment with application to online recommendation. In KDD. 1187--1196.
[6]
Kyung-Jae Cho, Yeon-Chang Lee, Kyungsik Han, Jaeho Choi, and Sang-Wook Kim. 2019. No, that's not my feedback: TV show recommendation using watchable interval. In ICDE. IEEE, 316--327.
[7]
Brendan J Frey and Delbert Dueck. 2007. Clustering by passing messages between data points. science, Vol. 315, 5814 (2007), 972--976.
[8]
Lei Guo, Jinyu Zhang, Tong Chen, Xinhua Wang, and Hongzhi Yin. 2022a. Reinforcement Learning-enhanced Shared-account Cross-domain Sequential Recommendation. IEEE Transactions on Knowledge and Data Engineering (2022).
[9]
Lei Guo, Jinyu Zhang, Li Tang, Tong Chen, Lei Zhu, and Hongzhi Yin. 2022b. Time Interval-enhanced Graph Neural Network for Shared-account Cross-domain Sequential Recommendation. arXiv preprint arXiv:2206.08050 (2022).
[10]
Wei Guo, Can Zhang, Zhicheng He, Jiarui Qin, Huifeng Guo, Bo Chen, Ruiming Tang, Xiuqiang He, and Rui Zhang. 2021. MISS: Multi-Interest Self-Supervised Learning Framework for Click-Through Rate Prediction. ICDE (2021).
[11]
Ruining He and Julian McAuley. 2016. Ups and downs: Modeling the visual evolution of fashion trends with one-class collaborative filtering. In WWW.
[12]
Xiangnan He, Lizi Liao, Hanwang Zhang, Liqiang Nie, Xia Hu, and Tat-Seng Chua. 2017. Neural collaborative filtering. In WWW. 173--182.
[13]
Balázs Hidasi, Alexandros Karatzoglou, Linas Baltrunas, and Domonkos Tikk. 2016. Session-based recommendations with recurrent neural networks. In ICLR.
[14]
Shang H Hsu, Ming-Hui Wen, Hsin-Chieh Lin, Chun-Chia Lee, and Chia-Hoang Lee. 2007. AIMED-A personalized TV recommendation system. In European conference on interactive television. Springer, 166--174.
[15]
Binbin Hu, Chuan Shi, Wayne Xin Zhao, and Tianchi Yang. 2018. Local and Global Information Fusion for Top-N Recommendation in Heterogeneous Information Network. In CIKM. ACM, 1683--1686.
[16]
Jyun-Yu Jiang, Cheng-Te Li, Yian Chen, and Wei Wang. 2018. Identifying users behind shared accounts in online streaming services. In SIGIR. 65--74.
[17]
Wang-Cheng Kang and Julian McAuley. 2018. Self-Attentive Sequential Recommendation. ICDM (2018).
[18]
Yehuda Koren. 2009. Collaborative filtering with temporal dynamics. In KDD.
[19]
Miklas S Kristoffersen, Sven E Shepstone, and Zheng-Hua Tan. 2020. Context-aware recommendations for televisions using deep embeddings with relaxed n-pairs loss objective. arXiv preprint arXiv:2002.01554 (2020).
[20]
Jing Li, Pengjie Ren, Zhumin Chen, Zhaochun Ren, Tao Lian, and Jun Ma. 2017. Neural attentive session-based recommendation. In CIKM. 1419--1428.
[21]
Jiasen Lu, Jianwei Yang, Dhruv Batra, and Devi Parikh. 2016. Hierarchical question-image co-attention for visual question answering. In NIPS.
[22]
Muyang Ma, Pengjie Ren, Yujie Lin, Zhumin Chen, Jun Ma, and Maarten de Rijke. 2019. π-net: A parallel information-sharing network for shared-account cross-domain sequential recommendations. In SIGIR. 685--694.
[23]
Carolina Nery, Renata Galante, and Weverton Cordeiro. 2021. FIP-SHA-Finding Individual Profiles Through SHared Accounts. In DEXA.
[24]
Lyndon Nixon, Jeremy Foss, Konstantinos Apostolidis, and Vasileios Mezaris. 2022. Data-driven personalisation of television content: a survey. Multimedia Systems (2022), 1--33.
[25]
Shinjee Pyo, Eunhui Kim, et al. 2014. LDA-based unified topic modeling for similar TV user grouping and TV program recommendation. IEEE transactions on cybernetics, Vol. 45, 8 (2014), 1476--1490.
[26]
Jiarui Qin, Kan Ren, Yuchen Fang, Weinan Zhang, and Yong Yu. 2020a. Sequential Recommendation with Dual Side Neighbor-based Collaborative Relation Modeling. In WSDM. ACM.
[27]
Jiarui Qin, Weinan Zhang, Rong Su, Zhirong Liu, Weiwen Liu, Ruiming Tang, Xiuqiang He, and Yong Yu. 2021. Retrieval & Interaction Machine for Tabular Data Prediction. In KDD. 1379--1389.
[28]
Jiarui Qin, W. Zhang, Xin Wu, Jiarui Jin, Yuchen Fang, and Y. Yu. 2020b. User Behavior Retrieval for Click-Through Rate Prediction. In SIGIR.
[29]
Jiarui Qin, Jiachen Zhu, Bo Chen, Zhirong Liu, Weiwen Liu, Ruiming Tang, Rui Zhang, Yong Yu, and Weinan Zhang. 2022. RankFlow: Joint Optimization of Multi-Stage Cascade Ranking Systems as Flows. In SIGIR. 814--824.
[30]
Steffen Rendle. 2010. Factorization machines. In ICDM.
[31]
Steffen Rendle, Christoph Freudenthaler, Zeno Gantner, and Lars Schmidt-Thieme. 2012. BPR: Bayesian personalized ranking from implicit feedback. In UAR.
[32]
Rafael Sotelo, Yolanda Blanco-Fernandez, Martin Lopez-Nores, Alberto Gil-Solla, and Jose J Pazos-Arias. 2009. TV program recommendation for groups based on muldimensional TV-anytime classifications. TCE, Vol. 55, 1 (2009), 248--256.
[33]
Wenchao Sun, Muyang Ma, Pengjie Ren, Yujie Lin, Zhumin Chen, Zhaochun Ren, Jun Ma, and Maarten De Rijke. 2021. Parallel Split-Join Networks for Shared Account Cross-domain Sequential Recommendations. TKDE (2021).
[34]
Ashish Vaswani, Noam Shazeer, Niki Parmar, Jakob Uszkoreit, Llion Jones, Aidan N Gomez, Łukasz Kaiser, and Illia Polosukhin. 2017. Attention is all you need. In Advances in neural information processing systems. 5998--6008.
[35]
Shoujin Wang, Liang Hu, Yan Wang, Longbing Cao, Quan Z Sheng, and Mehmet Orgun. 2019. Sequential recommender systems: challenges, progress and prospects. IJCAI (2019).
[36]
Zhijin Wang, Yan Yang, Liang He, and Junzhong Gu. 2014. User identification within a shared account: Improving ip-tv recommender performance. In East European Conference on Advances in Databases and Information Systems.
[37]
Xinyu Wen, Zhaohui Peng, Shanshan Huang, Senzhang Wang, and Philip S Yu. 2021. MISS: A multi-user identification network for shared-account session-aware recommendation. In DASFAA. Springer, 228--243.
[38]
Yan Yang, Qinmin Hu, Liang He, Minjie Ni, and Zhijin Wang. 2015. Adaptive temporal model for IPTV recommendation. In International Conference on Web-Age Information Management. Springer, 260--271.
[39]
Fulian Yin, Meiqi Ji, Sitong Li, and Yanyan Wang. 2022. Neural TV program recommendation with heterogeneous attention. KIS (2022), 1--21.
[40]
Zhiwen Yu, Xingshe Zhou, Yanbin Hao, and Jianhua Gu. 2006. TV program recommendation for multiple viewers based on user profile merging. UMUAI.
[41]
Amy Zhang, Nadia Fawaz, Stratis Ioannidis, and Andrea Montanari. 2012. Guess who rated this movie: Identifying users through subspace clustering. UAI.
[42]
Wei Zhang and Chris Challis. 2020. Automatic Identification of Account Sharing for Video Streaming Services. In International Conference on Industrial, Engineering and Other Applications of Applied Intelligent Systems. Springer, 162--173.
[43]
Guorui Zhou, Na Mou, Ying Fan, Qi Pi, Weijie Bian, Chang Zhou, Xiaoqiang Zhu, and Kun Gai. 2019. Deep interest evolution network for click-through rate prediction. In AAAI, Vol. 33. 5941--5948.
[44]
Guorui Zhou, Xiaoqiang Zhu, Chenru Song, Ying Fan, Han Zhu, Xiao Ma, Yanghui Yan, Junqi Jin, Han Li, and Kun Gai. 2018. Deep interest network for click-through rate prediction. In KDD. io

Cited By

View all
  • (2024)MODEM: Decoupling User Behavior for Shared-Account Video Recommendations on Large Screen DevicesProceedings of the 18th ACM Conference on Recommender Systems10.1145/3640457.3688167(907-911)Online publication date: 8-Oct-2024
  • (2024)Counteracting Duration Bias in Video Recommendation via Counterfactual Watch TimeProceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining10.1145/3637528.3671817(4455-4466)Online publication date: 25-Aug-2024
  • (2024)M-scan: A Multi-Scenario Causal-driven Adaptive Network for RecommendationProceedings of the ACM Web Conference 202410.1145/3589334.3645635(3844-3853)Online publication date: 13-May-2024
  • Show More Cited By

Index Terms

  1. Learning to Distinguish Multi-User Coupling Behaviors for TV Recommendation

    Recommendations

    Comments

    Information & Contributors

    Information

    Published In

    cover image ACM Conferences
    WSDM '23: Proceedings of the Sixteenth ACM International Conference on Web Search and Data Mining
    February 2023
    1345 pages
    ISBN:9781450394079
    DOI:10.1145/3539597
    Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than the author(s) must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected].

    Sponsors

    Publisher

    Association for Computing Machinery

    New York, NY, United States

    Publication History

    Published: 27 February 2023

    Permissions

    Request permissions for this article.

    Check for updates

    Author Tags

    1. TV recommendation
    2. coupling sequence modeling

    Qualifiers

    • Research-article

    Conference

    WSDM '23

    Acceptance Rates

    Overall Acceptance Rate 498 of 2,863 submissions, 17%

    Upcoming Conference

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • Downloads (Last 12 months)96
    • Downloads (Last 6 weeks)8
    Reflects downloads up to 01 Nov 2024

    Other Metrics

    Citations

    Cited By

    View all
    • (2024)MODEM: Decoupling User Behavior for Shared-Account Video Recommendations on Large Screen DevicesProceedings of the 18th ACM Conference on Recommender Systems10.1145/3640457.3688167(907-911)Online publication date: 8-Oct-2024
    • (2024)Counteracting Duration Bias in Video Recommendation via Counterfactual Watch TimeProceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining10.1145/3637528.3671817(4455-4466)Online publication date: 25-Aug-2024
    • (2024)M-scan: A Multi-Scenario Causal-driven Adaptive Network for RecommendationProceedings of the ACM Web Conference 202410.1145/3589334.3645635(3844-3853)Online publication date: 13-May-2024
    • (2024)A counterfactual explanation method based on modified group influence function for recommendationComplex & Intelligent Systems10.1007/s40747-024-01547-410:6(7631-7643)Online publication date: 27-Jul-2024

    View Options

    Get Access

    Login options

    View options

    PDF

    View or Download as a PDF file.

    PDF

    eReader

    View online with eReader.

    eReader

    Media

    Figures

    Other

    Tables

    Share

    Share

    Share this Publication link

    Share on social media