Interplay between upsampling and regularization for provider fairness in recommender systems

被引:0
作者
Ludovico Boratto
Gianni Fenu
Mirko Marras
机构
[1] EURECAT,
[2] Centre Tecnológic de Catalunya,undefined
[3] University of Cagliari,undefined
[4] École Polytechnique Fédérale de Lausanne (EPFL),undefined
来源
User Modeling and User-Adapted Interaction | 2021年 / 31卷
关键词
Recommender Systems; Collaborative Filtering; Multi-Stakeholder; Fairness; Exposure; Visibility; Regularization;
D O I
暂无
中图分类号
学科分类号
摘要
Considering the impact of recommendations on item providers is one of the duties of multi-sided recommender systems. Item providers are key stakeholders in online platforms, and their earnings and plans are influenced by the exposure their items receive in recommended lists. Prior work showed that certain minority groups of providers, characterized by a common sensitive attribute (e.g., gender or race), are being disproportionately affected by indirect and unintentional discrimination. Our study in this paper handles a situation where (i) the same provider is associated with multiple items of a list suggested to a user, (ii) an item is created by more than one provider jointly, and (iii) predicted user–item relevance scores are biasedly estimated for items of provider groups. Under this scenario, we assess disparities in relevance, visibility, and exposure, by simulating diverse representations of the minority group in the catalog and the interactions. Based on emerged unfair outcomes, we devise a treatment that combines observation upsampling and loss regularization, while learning user–item relevance scores. Experiments on real-world data demonstrate that our treatment leads to lower disparate relevance. The resulting recommended lists show fairer visibility and exposure, higher minority item coverage, and negligible loss in recommendation utility.
引用
收藏
页码:421 / 455
页数:34
相关论文
共 50 条
[41]   Fairness and Transparency in Music Recommender Systems: Improvements for Artists [J].
Dinnissen, Karlijn .
PROCEEDINGS OF THE EIGHTEENTH ACM CONFERENCE ON RECOMMENDER SYSTEMS, RECSYS 2024, 2024, :1368-1375
[42]   Consumer-side fairness in recommender systems: a systematic survey of methods and evaluation [J].
Vassoy, Bjornar ;
Langseth, Helge .
ARTIFICIAL INTELLIGENCE REVIEW, 2024, 57 (04)
[43]   Consumer-side fairness in recommender systems: a systematic survey of methods and evaluation [J].
Bjørnar Vassøy ;
Helge Langseth .
Artificial Intelligence Review, 57
[44]   Differentiating Regularization Weights - A Simple Mechanism to Alleviate Cold Start in Recommender Systems [J].
Chen, Hung-Hsuan ;
Chen, Pu .
ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA, 2019, 13 (01)
[45]   Feature-blind fairness in collaborative filtering recommender systems [J].
Borges, Rodrigo ;
Stefanidis, Kostas .
KNOWLEDGE AND INFORMATION SYSTEMS, 2022, 64 (04) :943-962
[46]   Joint Evaluation of Fairness and Relevance in Recommender Systems with Pareto Frontier [J].
Rampisela, Theresia Veronika ;
Ruotsalo, Tuukka ;
Maistro, Maria ;
Lioma, Christina .
PROCEEDINGS OF THE ACM WEB CONFERENCE 2025, WWW 2025, 2025, :1548-1566
[47]   FASTER: A Dynamic Fairness-assurance Strategy for Session-based Recommender Systems [J].
Wu, Yao ;
Cao, Jian ;
Xu, Guandong .
ACM TRANSACTIONS ON INFORMATION SYSTEMS, 2024, 42 (01)
[48]   Fairness among New Items in Cold Start Recommender Systems [J].
Zhu, Ziwei ;
Kim, Jingu ;
Nguyen, Trung ;
Fenton, Aish ;
Caverlee, James .
SIGIR '21 - PROCEEDINGS OF THE 44TH INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL, 2021, :767-776
[49]   Feature-blind fairness in collaborative filtering recommender systems [J].
Rodrigo Borges ;
Kostas Stefanidis .
Knowledge and Information Systems, 2022, 64 :943-962
[50]   Neural Representations in Hybrid Recommender Systems: Prediction versus Regularization [J].
Raziperchikolaei, Ramin ;
Li, Tianyu ;
Chung, Young-joo .
SIGIR '21 - PROCEEDINGS OF THE 44TH INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL, 2021, :1743-1747