Li Wang;Shoujin Wang;Quangui Zhang;Qiang Wu;Min Xu
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引用次数: 0
摘要
跨领域推荐(CDR)旨在通过跨领域的知识传递来解决数据稀疏性问题。现有的话单方法通常假设用户-项目交互数据在域之间是可共享的,这会导致隐私泄露。近年来,人们提出了一些隐私保护CDR (PPCDR)模型来解决这个问题。然而,它们主要传递的是仅从用户项目交互历史中学到的简单表示,忽略了其他有用的侧信息,导致不准确的用户偏好。此外,它们跨域传输不同的私有用户-项目交互矩阵或嵌入以保护隐私。然而,这些方法提供的隐私保护有限,因为攻击者可能会利用外部信息来推断原始数据。为了应对这些挑战,我们提出了一种新的联邦用户偏好建模(Federated User Preference Modeling, FUPM)框架。在FUPM中,首先,提出了一种新的综合偏好探索模块,从交互数据和附加数据(包括评论文本和潜在的积极项目)中学习用户的综合偏好。接下来,设计一个私有偏好转移模块,首先学习私有的局部原型和全局原型的差异,然后使用联邦学习策略私有地转移全局原型。这些原型是用户组的一般化表示,使攻击者难以推断个人信息。在Amazon和豆瓣数据集上对四个CDR任务进行了广泛的实验,验证了FUPM比SOTA基线的优越性。
Federated User Preference Modeling for Privacy-Preserving Cross-Domain Recommendation
Cross-domain recommendation (CDR) aims to address the data-sparsity problem by transferring knowledge across domains. Existing CDR methods generally assume that the user-item interaction data is shareable between domains, which leads to privacy leakage. Recently, some privacy-preserving CDR (PPCDR) models have been proposed to solve this problem. However, they primarily transfer simple representations learned only from user-item interaction histories, overlooking other useful side information, leading to inaccurate user preferences. Additionally, they transfer differentially private user-item interaction matrices or embeddings across domains to protect privacy. However, these methods offer limited privacy protection, as attackers may exploit external information to infer the original data. To address these challenges, we propose a novel Federated User Preference Modeling (FUPM) framework. In FUPM, first, a novel comprehensive preference exploration module is proposed to learn users' comprehensive preferences from both interaction data and additional data including review texts and potentially positive items. Next, a private preference transfer module is designed to first learn differentially private local and global prototypes, and then privately transfer the global prototypes using a federated learning strategy. These prototypes are generalized representations of user groups, making it difficult for attackers to infer individual information. Extensive experiments on four CDR tasks conducted on the Amazon and Douban datasets validate the superiority of FUPM over SOTA baselines.
期刊介绍:
The IEEE Transactions on Multimedia delves into diverse aspects of multimedia technology and applications, covering circuits, networking, signal processing, systems, software, and systems integration. The scope aligns with the Fields of Interest of the sponsors, ensuring a comprehensive exploration of research in multimedia.