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ShanghaiTech University Knowledge Management System
UNDERSTANDING CONVERGENCE AND GENERALIZATION IN FEDERATED LEARNING THROUGH FEATURE LEARNING THEORY | |
2024 | |
会议录名称 | INTERNATIONAL CONFERENCE ON LEARNING REPRESENTATIONS |
发表状态 | 已发表 |
摘要 | Federated Learning (FL) has attracted significant attention as an efficient privacy-preserving approach to distributed learning across multiple clients. Despite extensive empirical research and practical applications, a systematic way to theoretically understand the convergence and generalization properties in FL remains limited. This work aims to establish a unified theoretical foundation for understanding FL through feature learning theory. We focus on a scenario where each client employs a two-layer convolutional neural network (CNN) for local training on their own data. Many existing works analyze the convergence of Federated Averaging (FedAvg) under lazy training with linearizing assumptions in weight space. In contrast, our approach tracks the trajectory of signal learning and noise memorization in FL, eliminating the need for these assumptions. We further show that FedAvg can achieve near-zero test error by effectively increasing signal-to-noise ratio (SNR) in feature learning, while local training without communication achieves a large constant test error. This finding highlights the benefits of communication for generalization in FL. Moreover, our theoretical results suggest that a weighted FedAvg method, based on the similarity of input features across clients, can effectively tackle data heterogeneity issues in FL. Experimental results on both synthetic and real-world datasets verify our theoretical conclusions and emphasize the effectiveness of the weighted FedAvg approach. |
关键词 | Data Privacy Federated Learning Feature Learning Theory |
会议名称 | The Twelfth International Conference on Learning Representations, ICLR 2024 |
会议地点 | Vienna, Austria |
会议日期 | May 7th, 2024 - May 11th, 2024 |
收录类别 | EI |
语种 | 英语 |
文献类型 | 会议论文 |
条目标识符 | https://kms.shanghaitech.edu.cn/handle/2MSLDSTB/372792 |
专题 | 信息科学与技术学院_硕士生 信息科学与技术学院_PI研究组_石野组 |
通讯作者 | Shi, Ye |
作者单位 | 1.RIKEN Center for Advanced Intelligence Project, Japan 2.ShanghaiTech University, China 3.The University of Tokyo, Japan |
通讯作者单位 | 上海科技大学 |
推荐引用方式 GB/T 7714 | Huang, Wei,Shi, Ye,Cai, Zhongyi,et al. UNDERSTANDING CONVERGENCE AND GENERALIZATION IN FEDERATED LEARNING THROUGH FEATURE LEARNING THEORY[C],2024. |
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