[go: up one dir, main page]
More Web Proxy on the site http://driver.im/ skip to main content
research-article

Distributional Fairness-aware Recommendation

Published: 29 April 2024 Publication History

Abstract

Fairness has been gradually recognized as a significant problem in the recommendation domain. Previous models usually achieve fairness by reducing the average performance gap between different user groups. However, the average performance may not sufficiently represent all the characteristics of the performances in a user group. Thus, equivalent average performance may not mean the recommender model is fair, for example, the variance of the performances can be different. To alleviate this problem, in this article, we define a novel type of fairness, where we require that the performance distributions across different user groups should be similar. We prove that with the same performance distribution, the numerical characteristics of the group performance, including the expectation, variance, and any higher-order moment, are also the same. To achieve distributional fairness, we propose a generative and adversarial training framework. Specifically, we regard the recommender model as the generator to compute the performance for each user in different groups, and then we deploy a discriminator to judge which group the performance is drawn from. By iteratively optimizing the generator and the discriminator, we can theoretically prove that the optimal generator (the recommender model) can indeed lead to the equivalent performance distributions. To smooth the adversarial training process, we propose a novel dual curriculum learning strategy for optimal scheduling of training samples. Additionally, we tailor our framework to better suit top-N recommendation tasks by incorporating softened ranking metrics as measures of performance discrepancies. We conduct extensive experiments based on real-world datasets to demonstrate the effectiveness of our model.

References

[1]
Chirag Agarwal, Himabindu Lakkaraju, and Marinka Zitnik. 2021. Towards a unified framework for fair and stable graph representation learning. In Proceedings of the Conference on Uncertainty in Artificial Intelligence. PMLR, 2114–2124.
[2]
Mario Arduini, Lorenzo Noci, Federico Pirovano, Ce Zhang, Yash Raj Shrestha, and Bibek Paudel. 2020. Adversarial learning for debiasing knowledge graph embeddings. Retrieved from https://arXiv:2006.16309
[3]
Martin Arjovsky and Léon Bottou. 2017. Towards principled methods for training generative adversarial networks. Retrieved from https://arXiv:1701.04862
[4]
Ghazaleh Beigi, Ahmadreza Mosallanezhad, Ruocheng Guo, Hamidreza Alvari, Alexander Nou, and Huan Liu. 2020. Privacy-aware recommendation with private-attribute protection using adversarial learning. In Proceedings of the 13th International Conference on Web Search and Data Mining. 34–42.
[5]
Alex Beutel, Jilin Chen, Zhe Zhao, and Ed H. Chi. 2017. Data decisions and theoretical implications when adversarially learning fair representations. Retrieved from https://arXiv:1707.00075
[6]
Asia J. Biega, Krishna P. Gummadi, and Gerhard Weikum. 2018. Equity of attention: Amortizing individual fairness in rankings. In Proceedings of the 41st International ACM SIGIR Conference on Research and Development in Information Retrieval. 405–414.
[7]
Avishek Bose and William Hamilton. 2019. Compositional fairness constraints for graph embeddings. In Proceedings of the International Conference on Machine Learning. PMLR, 715–724.
[8]
Andrew Brock, Jeff Donahue, and Karen Simonyan. 2018. Large-scale GAN training for high fidelity natural image synthesis. Retrieved from https://arXiv:1809.11096
[9]
Michael Buckland and Fredric Gey. 1994. The relationship between recall and precision. J. Amer. Soc. Info. Sci. 45, 1 (1994), 12–19.
[10]
Burke Robin, Sonboli Nasim, Mansoury Masoud, and Ordoñez-Gauger Aldo. 2017. Balanced neighborhoods for fairness-aware collaborative recommendation. In Proceedings of the ACM FATRec Workshop.
[11]
Dong-Kyu Chae, Jin-Soo Kang, Sang-Wook Kim, and Jung-Tae Lee. 2018. CFGAN: A generic collaborative filtering framework based on generative adversarial networks. In Proceedings of the 27th ACM International Conference on Information and Knowledge Management. 137–146.
[12]
Lei Chen, Le Wu, Kun Zhang, Richang Hong, Defu Lian, Zhiqiang Zhang, Jun Zhou, and Meng Wang. 2023. Improving recommendation fairness via data augmentation. In Proceedings of the ACM Web Conference 2023. 1012–1020.
[13]
Xiao Chen, Wenqi Fan, Jingfan Chen, Haochen Liu, Zitao Liu, Zhaoxiang Zhang, and Qing Li. 2023. Fairly adaptive negative sampling for recommendations. In Proceedings of the ACM Web Conference. 3723–3733.
[14]
Xu Chen, Hongteng Xu, Yongfeng Zhang, Jiaxi Tang, Yixin Cao, Zheng Qin, and Hongyuan Zha. 2018. Sequential recommendation with user memory networks. In Proceedings of the 11st ACM International Conference on Web Search and Data Mining. 108–116.
[15]
Ying Chen, Weinan Zhang, and Yuyu Zhang. 2020. Adversarial training for recommendation systems with implicit feedback. In Advances in Neural Information Processing Systems. 10596–10606.
[16]
Enyan Dai and Suhang Wang. 2023. Learning fair graph neural networks with limited and private sensitive attribute information. IEEE Trans. Knowl. Data Eng. 35, 7 (2023), 7103–7117.
[17]
Virginie Do, Sam Corbett-Davies, Jamal Atif, and Nicolas Usunier. 2021. Two-sided fairness in rankings via Lorenz dominance. Adv. Neural Info. Process. Syst. 34 (2021), 8596–8608.
[18]
Virginie Do, Sam Corbett-Davies, Jamal Atif, and Nicolas Usunier. 2022. Online certification of preference-based fairness for personalized recommender systems. In Proceedings of the AAAI Conference on Artificial Intelligence, Vol. 36. 6532–6540.
[19]
Mengnan Du, Fan Yang, Na Zou, and Xia Hu. 2020. Fairness in deep learning: A computational perspective. IEEE Intell. Syst. 36, 4 (2020), 25–34.
[20]
Harrison Edwards and Amos Storkey. 2015. Censoring representations with an adversary. Retrieved from https://arXiv:1511.05897
[21]
Yanai Elazar and Yoav Goldberg. 2018. Adversarial removal of demographic attributes from text data. Retrieved from https://arXiv:1808.06640
[22]
Golnoosh Farnadi, Pigi Kouki, Spencer K. Thompson, Sriram Srinivasan, and Lise Getoor. 2018. A fairness-aware hybrid recommender system. Retrieved from https://arXiv:1809.09030
[23]
Carlos Florensa, David Held, Markus Wulfmeier, Michael Zhang, and Pieter Abbeel. 2017. Reverse curriculum generation for reinforcement learning. In Proceedings of the Conference on Robot Learning. PMLR, 482–495.
[24]
Zuohui Fu, Yikun Xian, Ruoyuan Gao, Jieyu Zhao, Qiaoying Huang, Yingqiang Ge, Shuyuan Xu, Shijie Geng, Chirag Shah, Yongfeng Zhang et al. 2020. Fairness-aware explainable recommendation over knowledge graphs. In Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval. 69–78.
[25]
Elizabeth Gómez, Carlos Shui Zhang, Ludovico Boratto, Maria Salamó, and Mirko Marras. 2021. The winner takes it all: Geographic imbalance and provider (un)fairness in educational recommender systems. In Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval. 1808–1812.
[26]
Ian Goodfellow, Jean Pouget-Abadie, Mehdi Mirza, Bing Xu, David Warde-Farley, Sherjil Ozair, Aaron Courville, and Yoshua Bengio. 2020. Generative adversarial networks. Commun. ACM 63, 11 (2020), 139–144.
[27]
Arthur Gretton, Karsten Borgwardt, Malte Rasch, Bernhard Schölkopf, and Alex Smola. 2006. A kernel method for the two-sample-problem. Adv. Neural Info. Process. Syst. 19 (2006).
[28]
Aditya Grover, Eric Wang, Aaron Zweig, and Stefano Ermon. 2019. Stochastic optimization of sorting networks via continuous relaxations. Retrieved from https://arXiv:1903.08850
[29]
Anjali Gupta, Shreyans J Nagori, Abhijnan Chakraborty, Rohit Vaish, Sayan Ranu, Prajit Prashant Nadkarni, Narendra Varma Dasararaju, and Muthusamy Chelliah. 2023. Towards fair allocation in social commerce platforms. In Proceedings of the ACM Web Conference 2023. 3744–3754.
[30]
Jens Hainmueller. 2012. Entropy balancing for causal effects: A multivariate reweighting method to produce balanced samples in observational studies. Politic. Anal. 20, 1 (2012), 25–46.
[31]
Xiangnan He, Kuan Deng, Xiang Wang, Yan Li, Yongdong Zhang, and Meng Wang. 2020. LightGCN: Simplifying and powering graph convolution network for recommendation. In Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval. 639–648.
[32]
Xiangnan He, Zhankui He, Xiaoyu Du, and Tat-Seng Chua. 2018. Adversarial personalized ranking for recommendation. In Proceedings of the 41st International ACM SIGIR Conference on Research and Development in Information Retrieval. 355–364.
[33]
Xiangnan He, Lizi Liao, Hanwang Zhang, Liqiang Nie, Xia Hu, and Tat-Seng Chua. 2017. Neural collaborative filtering. In Proceedings of the Web Conference. 173–182.
[34]
Rashidul Islam, Kamrun Naher Keya, Ziqian Zeng, Shimei Pan, and James Foulds. 2021. Debiasing career recommendations with neural fair collaborative filtering. In Proceedings of the Web Conference. 3779–3790.
[35]
Kalervo Järvelin and Jaana Kekäläinen. 2002. Cumulated gain-based evaluation of IR techniques. ACM Trans. Info. Syst. 20, 4 (2002), 422–446.
[36]
Lu Jiang, Deyu Meng, Teruko Mitamura, and Alexander G. Hauptmann. 2014. Easy samples first: Self-paced reranking for zero-example multimedia search. In Proceedings of the 22nd ACM International Conference on Multimedia. 547–556.
[37]
Mesut Kaya, Derek Bridge, and Nava Tintarev. 2020. Ensuring fairness in group recommendations by rank-sensitive balancing of relevance. In Proceedings of the 14th ACM Conference on Recommender Systems. 101–110.
[38]
Yehuda Koren, Robert Bell, and Chris Volinsky. 2009. Matrix factorization techniques for recommender systems. Computer 42, 8 (2009), 30–37.
[39]
Emmanouil Krasanakis, Eleftherios Spyromitros-Xioufis, Symeon Papadopoulos, and Yiannis Kompatsiaris. 2018. Adaptive sensitive reweighting to mitigate bias in fairness-aware classification. In Proceedings of the World Wide Web Conference. 853–862.
[40]
Matt J. Kusner and José Miguel Hernández-Lobato. 2016. GANs for sequences of discrete elements with the Gumbel-softmax distribution. Retrieved from https://arXiv:1611.04051
[41]
Timothy La Fond and Jennifer Neville. 2010. Randomization tests for distinguishing social influence and homophily effects. In Proceedings of the 19th International Conference on World Wide Web. 601–610.
[42]
Tai Le Quy, Arjun Roy, Vasileios Iosifidis, Wenbin Zhang, and Eirini Ntoutsi. 2022. A survey on datasets for fairness-aware machine learning. Wiley Interdisc. Rev.: Data Min. Knowl. Discov. 12, 3 (2022), e1452.
[43]
Hyunsung Lee, Sangwoo Cho, Yeongjae Jang, Jaekwang Kim, and Honguk Woo. 2021. Differentiable ranking metric using relaxed sorting for top-k recommendation. IEEE Access 9 (2021), 114649–114658.
[44]
Jurek Leonhardt, Avishek Anand, and Megha Khosla. 2018. User fairness in recommender systems. In Proceedings of the Web Conference. 101–102.
[45]
Jiwei Li, Will Monroe, Tianlin Shi, Sébastien Jean, Alan Ritter, and Dan Jurafsky. 2017. Adversarial learning for neural dialogue generation. Retrieved from https://arXiv:1701.06547
[46]
Jie Li, Yongli Ren, and Ke Deng. 2022. FairGAN: GANs-based fairness-aware learning for recommendations with implicit feedback. In Proceedings of the ACM Web Conference 2022. 297–307.
[47]
Roger Zhe Li, Julián Urbano, and Alan Hanjalic. 2021. Leave no user behind: Towards improving the utility of recommender systems for non-mainstream users. In Proceedings of the 14th ACM International Conference on Web Search and Data Mining. 103–111.
[48]
Yunqi Li, Hanxiong Chen, Zuohui Fu, Yingqiang Ge, and Yongfeng Zhang. 2021. User-oriented fairness in recommendation. In Proceedings of the Web Conference. 624–632.
[49]
Yunqi Li, Hanxiong Chen, Shuyuan Xu, Yingqiang Ge, Juntao Tan, Shuchang Liu, and Yongfeng Zhang. 2022. Fairness in recommendation: A survey. Retrieved from https://arXiv:2205.13619
[50]
Yunqi Li, Hanxiong Chen, Shuyuan Xu, Yingqiang Ge, and Yongfeng Zhang. 2021. Towards personalized fairness based on causal notion. In Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval. 1054–1063.
[51]
Chen Lin, Xinyi Liu, Guipeng Xv, and Hui Li. 2021. Mitigating sentiment bias for recommender systems. In Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval. 31–40.
[52]
Aleksander Madry, Aleksandar Makelov, Ludwig Schmidt, Dimitris Tsipras, and Adrian Vladu. 2017. Towards deep learning models resistant to adversarial attacks. Retrieved from https://arXiv:1706.06083
[53]
Arjovsky Martin, Chintala Soumith, and B. Léon. 2017. Wasserstein generative adversarial networks. In Proceedings of the International Conference on Machine Learning. 214–223.
[54]
Tambet Matiisen, Avital Oliver, Taco Cohen, and John Schulman. 2019. Teacher–student curriculum learning. IEEE Trans. Neural Netw. Learn. Syst. 31, 9 (2019), 3732–3740.
[55]
Miller McPherson, Lynn Smith-Lovin, and James M. Cook. 2001. Birds of a feather: Homophily in social networks. Annu. Rev. Sociol. 27, 1 (2001), 415–444.
[56]
Rishabh Mehrotra, James McInerney, Hugues Bouchard, Mounia Lalmas, and Fernando Diaz. 2018. Towards a fair marketplace: Counterfactual evaluation of the trade-off between relevance, fairness & satisfaction in recommendation systems. In Proceedings of the 27th ACM International Conference on Information and Knowledge Management. 2243–2251.
[57]
Takeru Miyato, Andrew M. Dai, and Ian Goodfellow. 2016. Adversarial training methods for semi-supervised text classification. Retrieved from https://arXiv:1605.07725
[58]
Mohammadmehdi Naghiaei, Hossein A. Rahmani, and Yashar Deldjoo. 2022. Cpfair: Personalized consumer and producer fairness re-ranking for recommender systems. Retrieved from https://arXiv:2204.08085
[59]
Preetam Nandy, Cyrus Diciccio, Divya Venugopalan, Heloise Logan, Kinjal Basu, and Noureddine El Karoui. 2022. Achieving fairness via post-processing in web-scale recommender systems. In Proceedings of the ACM Conference on Fairness, Accountability, and Transparency. 715–725.
[60]
Augustus Odena, Christopher Olah, and Jonathon Shlens. 2017. Conditional image synthesis with auxiliary classifier gans. In Proceedings of the International Conference on Machine Learning. PMLR, 2642–2651.
[61]
Evaggelia Pitoura, Georgia Koutrika, and Kostas Stefanidis. 2020. Fairness in rankings and recommenders. In Proceedings of the International Conference on Extending Database Technology (EDBT’20). 651–654.
[62]
Evaggelia Pitoura, Kostas Stefanidis, and Georgia Koutrika. 2022. Fairness in rankings and recommendations: An overview. VLDB J. (2022), 1–28.
[63]
Emmanouil Antonios Platanios, Otilia Stretcu, Graham Neubig, Barnabas Poczos, and Tom M. Mitchell. 2019. Competence-based curriculum learning for neural machine translation. Retrieved from https://arXiv:1903.09848
[64]
Tao Qi, Fangzhao Wu, Chuhan Wu, Peijie Sun, Le Wu, Xiting Wang, Yongfeng Huang, and Xing Xie. 2022. ProFairRec: Provider fairness-aware news recommendation. Retrieved from https://arXiv:2204.04724
[65]
Alec Radford, Luke Metz, and Soumith Chintala. 2015. Unsupervised representation learning with deep convolutional generative adversarial networks. Retrieved from https://arXiv:1511.06434
[66]
Bashir Rastegarpanah, Krishna P. Gummadi, and Mark Crovella. 2019. Fighting fire with fire: Using antidote data to improve polarization and fairness of recommender systems. In Proceedings of the 12th ACM International Conference on Web Search and Data Mining. 231–239.
[67]
Steffen Rendle, Christoph Freudenthaler, Zeno Gantner, and Lars Schmidt-Thieme. 2012. BPR: Bayesian personalized ranking from implicit feedback. Retrieved from https://arXiv:1205.2618
[68]
Dimitris Sacharidis. 2019. Top-n group recommendations with fairness. In Proceedings of the 34th ACM/SIGAPP Symposium on Applied Computing. 1663–1670.
[69]
Dimitris Serbos, Shuyao Qi, Nikos Mamoulis, Evaggelia Pitoura, and Panayiotis Tsaparas. 2017. Fairness in package-to-group recommendations. In Proceedings of the 26th International Conference on World Wide Web. 371–379.
[70]
Qijie Shen, Wanjie Tao, Jing Zhang, Hong Wen, Zulong Chen, and Quan Lu. 2021. SAR-Net: A scenario-aware ranking network for personalized fair recommendation in hundreds of travel scenarios. In Proceedings of the 30th ACM International Conference on Information and Knowledge Management. 4094–4103.
[71]
Jessie J. Smith, Lex Beattie, and Henriette Cramer. 2023. Scoping fairness objectives and identifying fairness metrics for recommender systems: The practitioners’ perspective. In Proceedings of the ACM Web Conference 2023. 3648–3659.
[72]
Petru Soviany, Claudiu Ardei, Radu Tudor Ionescu, and Marius Leordeanu. 2020. Image difficulty curriculum for generative adversarial networks (CuGAN). In Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision. 3463–3472.
[73]
Indro Spinelli, Simone Scardapane, Amir Hussain, and Aurelio Uncini. 2021. Fairdrop: Biased edge dropout for enhancing fairness in graph representation learning. IEEE Trans. Artific. Intell. 3, 3 (2021), 344–354.
[74]
Harald Steck. 2018. Calibrated recommendations. In Proceedings of the 12th ACM Conference on Recommender Systems. 154–162.
[75]
Juntao Tan, Shuyuan Xu, Yingqiang Ge, Yunqi Li, Xu Chen, and Yongfeng Zhang. 2021. Counterfactual explainable recommendation. In Proceedings of the 30th ACM International Conference on Information & Knowledge Management. 1784–1793.
[76]
Yi Tay, Shuohang Wang, Luu Anh Tuan, Jie Fu, Minh C Phan, Xingdi Yuan, Jinfeng Rao, Siu Cheung Hui, and Aston Zhang. 2019. Simple and effective curriculum pointer-generator networks for reading comprehension over long narratives. Retrieved from https://arXiv:1905.10847
[77]
Ilya O. Tolstikhin, Neil Houlsby, Alexander Kolesnikov, Lucas Beyer, Xiaohua Zhai, Thomas Unterthiner, Jessica Yung, Andreas Steiner, Daniel Keysers, Jakob Uszkoreit et al. 2021. MLP-mixer: An all-MLP architecture for vision. Adv. Neural Info. Process. Syst. 34 (2021), 24261–24272.
[78]
Lequn Wang and Thorsten Joachims. 2023. Uncertainty quantification for fairness in two-stage recommender systems. In Proceedings of the 16th ACM International Conference on Web Search and Data Mining. 940–948.
[79]
Tianlu Wang, Jieyu Zhao, Mark Yatskar, Kai-Wei Chang, and Vicente Ordonez. 2019. Balanced datasets are not enough: Estimating and mitigating gender bias in deep image representations. In Proceedings of the IEEE/CVF International Conference on Computer Vision. 5310–5319.
[80]
Xin Wang, Yudong Chen, and Wenwu Zhu. 2021. A survey on curriculum learning. IEEE Trans. Pattern Anal. Mach. Intell. 44, 9 (2021), 4555–4576.
[81]
Xuezhi Wang, Nithum Thain, Anu Sinha, Flavien Prost, Ed H. Chi, Jilin Chen, and Alex Beutel. 2021. Practical compositional fairness: Understanding fairness in multi-component recommender systems. In Proceedings of the 14th ACM International Conference on Web Search and Data Mining. 436–444.
[82]
Chuhan Wu, Fangzhao Wu, Tao Qi, and Yongfeng Huang. 2022. Are big recommendation models fair to cold users? Retrieved from https://arXiv:2202.13607
[83]
Le Wu, Lei Chen, Pengyang Shao, Richang Hong, Xiting Wang, and Meng Wang. 2021. Learning fair representations for recommendation: A graph-based perspective. In Proceedings of the Web Conference. 2198–2208.
[84]
Yiqing Wu, Ruobing Xie, Yongchun Zhu, Fuzhen Zhuang, Ao Xiang, Xu Zhang, Leyu Lin, and Qing He. 2022. Selective fairness in recommendation via prompts. In Proceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval. 2657–2662.
[85]
Yongkai Wu, Lu Zhang, Xintao Wu, and Hanghang Tong. 2019. PC-fairness: A unified framework for measuring causality-based fairness. Adv. Neural Info. Process. Syst. 32 (2019).
[86]
Lin Xiao, Zhang Min, Zhang Yongfeng, Gu Zhaoquan, Liu Yiqun, and Ma Shaoping. 2017. Fairness-aware group recommendation with pareto-efficiency. In Proceedings of the 11th ACM Conference on Recommender Systems. 107–115.
[87]
Qizhe Xie, Zihang Dai, Yulun Du, Eduard Hovy, and Graham Neubig. 2017. Controllable invariance through adversarial feature learning. Adv. Neural Info. Process. Syst. 30 (2017).
[88]
Chen Xu, Sirui Chen, Jun Xu, Weiran Shen, Xiao Zhang, Gang Wang, and Zhenhua Dong. 2023. P-MMF: Provider max-min fairness re-ranking in recommender system. In Proceedings of the ACM Web Conference 2023. 3701–3711.
[89]
Tao Yang, Zhichao Xu, and Qingyao Ai. 2022. Effective exposure amortizing for fair top-k recommendation. Retrieved from https://arXiv:2204.03046
[90]
Sirui Yao and Bert Huang. 2017. Beyond parity: Fairness objectives for collaborative filtering. Adv. Neural Info. Process. Syst. 30 (2017).
[91]
Lantao Yu, Weinan Zhang, Jun Wang, and Yong Yu. 2017. Seqgan: Sequence generative adversarial nets with policy gradient. In Proceedings of the AAAI Conference on Artificial Intelligence, Vol. 31.
[92]
Dingwen Zhang, Haibin Tian, and Jungong Han. 2020. Few-cost salient object detection with adversarial-paced learning. Adv. Neural Info. Process. Syst. 33 (2020), 12236–12247.
[93]
Yizhe Zhang, Zhe Gan, and Lawrence Carin. 2016. Generating text via adversarial training. In Proceedings of the NIPS Workshop on Adversarial Training, Vol. 21. 21–32.
[94]
Yu Zheng, Chen Gao, Xiang Li, Xiangnan He, Yong Li, and Depeng Jin. 2021. Disentangling user interest and conformity for recommendation with causal embedding. In Proceedings of the Web Conference. 2980–2991.
[95]
Ziwei Zhu, Xia Hu, and James Caverlee. 2018. Fairness-aware tensor-based recommendation. In Proceedings of the 27th ACM International Conference on Information and Knowledge Management. 1153–1162.
[96]
Ziwei Zhu, Jingu Kim, Trung Nguyen, Aish Fenton, and James Caverlee. 2021. Fairness among new items in cold start recommender systems. In Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval. 767–776.
[97]
Ziwei Zhu, Jianling Wang, and James Caverlee. 2020. Measuring and mitigating item under-recommendation bias in personalized ranking systems. In Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval. 449–458.
[98]
Ziwei Zhu, Jianling Wang, Yin Zhang, and James Caverlee. 2018. Fairness-aware recommendation of information curators. Retrieved from https://arXiv:1809.03040

Cited By

View all
  • (2024)Enhancing Cross-Domain Recommender Systems with LLMs: Evaluating Bias and Beyond-Accuracy MeasuresProceedings of the 18th ACM Conference on Recommender Systems10.1145/3640457.3688027(1388-1394)Online publication date: 8-Oct-2024

Index Terms

  1. Distributional Fairness-aware Recommendation

    Recommendations

    Comments

    Please enable JavaScript to view thecomments powered by Disqus.

    Information & Contributors

    Information

    Published In

    cover image ACM Transactions on Information Systems
    ACM Transactions on Information Systems  Volume 42, Issue 5
    September 2024
    809 pages
    EISSN:1558-2868
    DOI:10.1145/3618083
    Issue’s Table of Contents

    Publisher

    Association for Computing Machinery

    New York, NY, United States

    Publication History

    Published: 29 April 2024
    Online AM: 18 March 2024
    Accepted: 11 March 2024
    Revised: 14 December 2023
    Received: 09 June 2023
    Published in TOIS Volume 42, Issue 5

    Check for updates

    Author Tags

    1. Distributional fairness
    2. adversarial training
    3. recommender system

    Qualifiers

    • Research-article

    Funding Sources

    • National Natural Science Foundation of China
    • Beijing Outstanding Young Scientist Program
    • Intelligent Social Governance Platform, Major Innovation & Planning Interdisciplinary Platform
    • Research Funds of Renmin University of China

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • Downloads (Last 12 months)484
    • Downloads (Last 6 weeks)42
    Reflects downloads up to 01 Jan 2025

    Other Metrics

    Citations

    Cited By

    View all
    • (2024)Enhancing Cross-Domain Recommender Systems with LLMs: Evaluating Bias and Beyond-Accuracy MeasuresProceedings of the 18th ACM Conference on Recommender Systems10.1145/3640457.3688027(1388-1394)Online publication date: 8-Oct-2024

    View Options

    Login options

    Full Access

    View options

    PDF

    View or Download as a PDF file.

    PDF

    eReader

    View online with eReader.

    eReader

    Full Text

    View this article in Full Text.

    Full Text

    Media

    Figures

    Other

    Tables

    Share

    Share

    Share this Publication link

    Share on social media