As artificial intelligence (AI)-empowered applications become widespread, there is growing awareness and concern for user privacy and data confidentiality. This has contributed to the popularity of federated learning (FL). FL applications often face data distribution and device capability heterogeneity across data owners. This has stimulated the rapid development of Personalized FL (PFL). In this paper, we complement existing surveys, which largely focus on the methods and applications of FL, with a review of recent advances in PFL. We discuss hurdles to PFL under the current FL settings, and present a unique taxonomy dividing PFL techniques into data-based and model-based approaches. We highlight their key ideas, and envision promising future trajectories of research towards new PFL architectural design, realistic PFL benchmarking, and trustworthy PFL approaches.
翻译:随着人工智能(AI)动力应用的普及,人们对用户隐私和数据保密的认识和关切日益增强,这促使联合学习(FL)受到欢迎。FL应用往往在数据拥有者之间面临数据分配和装置能力差异。这刺激了个性化FL(PFL)的快速发展。在本文中,我们补充了主要侧重于FL方法和应用的现有调查,审查了FL的最新进展。我们讨论了当前FL设置下PFL面临的障碍,提出了一种独特的分类法,将PLF技术分为基于数据和基于模型的方法。我们强调了他们的主要想法,并设想了未来有前途的研究轨迹,以便采用新的PLFL建筑设计、现实的PFL基准和可靠的PFL方法。