论文标题

致力于沟通高效且公平的联合性个性化顺序建议

Towards Communication Efficient and Fair Federated Personalized Sequential Recommendation

论文作者

Luo, Sichun, Xiao, Yuanzhang, Liu, Yang, Li, Congduan, Song, Linqi

论文摘要

联邦建议利用联合学习(FL)技术来提出隐私建议。尽管联合推荐系统的最新成功,但仍有几个重要挑战要解决:(i)大多数联合建议模型仅考虑模型性能和保护隐私能力,同时忽略了通信过程的优化; (ii)大多数联邦推荐人都是为异构系统设计的,在联邦过程中导致不公平问题; (iii)在许多联合推荐系统中,个性化技术的探索程度较低。 在本文中,我们提出了一种沟通高效且公平的个性化联合性个性化的顺序推荐算法(CF-FEDSR),以应对这些挑战。 CF-FEDSR引入了一种沟通效率的方案,该方案采用自适应客户选择和基于聚类的抽样来加速培训过程。提出了一种公平感知的模型汇总算法,该算法可以自适应地捕获不同客户之间的数据和性能失衡以解决不公平性问题。个性化模块可帮助客户提出个性化建议,并通过本地微调和模型适应来提高建议性能。广泛的实验结果表明我们提出的方法的有效性和效率。

Federated recommendations leverage the federated learning (FL) techniques to make privacy-preserving recommendations. Though recent success in the federated recommender system, several vital challenges remain to be addressed: (i) The majority of federated recommendation models only consider the model performance and the privacy-preserving ability, while ignoring the optimization of the communication process; (ii) Most of the federated recommenders are designed for heterogeneous systems, causing unfairness problems during the federation process; (iii) The personalization techniques have been less explored in many federated recommender systems. In this paper, we propose a Communication efficient and Fair personalized Federated personalized Sequential Recommendation algorithm (CF-FedSR) to tackle these challenges. CF-FedSR introduces a communication-efficient scheme that employs adaptive client selection and clustering-based sampling to accelerate the training process. A fairness-aware model aggregation algorithm that can adaptively capture the data and performance imbalance among different clients to address the unfairness problems is proposed. The personalization module assists clients in making personalized recommendations and boosts the recommendation performance via local fine-tuning and model adaption. Extensive experimental results show the effectiveness and efficiency of our proposed method.

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