With rising concerns about privacy, developing recommendation systems in a federated setting become a new paradigm to develop next-generation Internet service architecture. However, existing approaches are usually derived from a distributed recommendation framework with an additional mechanism for privacy protection, thus most of them fail to fully exploit personalization in the new context of federated recommendation settings. In this paper, we propose a novel approach called Federated Recommendation with Additive Personalization (FedRAP) to enhance recommendation by learning user embedding and the user's personal view of item embeddings. Specifically, the proposed additive personalization is to add a personalized item embedding to a sparse global item embedding aggregated from all users. Moreover, a curriculum learning mechanism has been applied for additive personalization on item embeddings by gradually increasing regularization weights to mitigate the performance degradation caused by large variances among client-specific item embeddings. A unified formulation has been proposed with a sparse regularization of global item embeddings for reducing communication overhead. Experimental results on four real-world recommendation datasets demonstrate the effectiveness of FedRAP.
翻译:随着对隐私的日益关切,在联合环境下开发建议系统成为发展下一代因特网服务架构的新范例,然而,现有办法通常来自分布式建议框架,并有一个额外的隐私保护机制,因此大多数办法未能在联合建议设置的新背景下充分利用个性化;在本文件中,我们提议采用名为“添加个性化的联邦建议”的新办法,通过学习用户嵌入和用户对嵌入项目的个人观点,加强建议;具体地说,拟议的添加添加个性化项目,嵌入一个由所有用户汇集的稀薄全球项目;此外,课程学习机制已应用于项目嵌入的添加个性化个人化,通过逐步增加正规化的权重,减轻客户特定项目嵌入中的巨大差异造成的性能退化;提议采用统一公式,对全球嵌入项目进行少许的正规化,以减少通信间接费用;四个真实世界建议数据集的实验结果显示了美联储的有效性。