FRAug: Tackling Federated Learning with Non-IID Features via Representation Augmentation

被引:18
作者
Chen, Haokun [1 ,2 ]
Frikha, Ahmed [1 ,2 ,3 ]
Krompass, Denis [2 ]
Gu, Jindong [4 ]
Tresp, Volker [1 ,3 ]
机构
[1] Ludwig Maximilian Univ Munich, Munich, Germany
[2] Siemens Technol, Munich, Germany
[3] Munich Ctr Machine Learning, Munich, Germany
[4] Univ Oxford, Oxford, England
来源
2023 IEEE/CVF INTERNATIONAL CONFERENCE ON COMPUTER VISION, ICCV | 2023年
关键词
D O I
10.1109/ICCV51070.2023.00447
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Federated Learning (FL) is a decentralized machine learning paradigm, in which multiple clients collaboratively train neural networks without centralizing their local data, and hence preserve data privacy. However, real-world FL applications usually encounter challenges arising from distribution shifts across the local datasets of individual clients. These shifts may drift the global model aggregation or result in convergence to deflected local optimum. While existing efforts have addressed distribution shifts in the label space, an equally important challenge remains relatively unexplored. This challenge involves situations where the local data of different clients indicate identical label distributions but exhibit divergent feature distributions. This issue can significantly impact the global model performance in the FL framework. In this work, we propose Federated Representation Augmentation (FRAug) to resolve this practical and challenging problem. FRAug optimizes a shared embedding generator to capture client consensus. Its output synthetic embeddings are transformed into client-specific by a locally optimized RTNet to augment the training space of each client. Our empirical evaluation on three public benchmarks and a real-world medical dataset demonstrates the effectiveness of the proposed method, which substantially outperforms the current state-of-the-art FL methods for feature distribution shifts, including PartialFed and FedBN.
引用
收藏
页码:4826 / 4836
页数:11
相关论文
共 76 条
[1]  
Alam Samiul, 2022, ARXIV221201548
[2]   Siloed Federated Learning for Multi-centric Histopathology Datasets [J].
Andreux, Mathieu ;
du Terrail, Jean Ogier ;
Beguier, Constance ;
Tramel, Eric W. .
DOMAIN ADAPTATION AND REPRESENTATION TRANSFER, AND DISTRIBUTED AND COLLABORATIVE LEARNING, DART 2020, DCL 2020, 2020, 12444 :129-139
[3]  
Arivazhagan Manoj Ghuhan, 2019, CoRR abs/1912.00818
[4]  
Chen Chen, 2022, ARXIV220514926
[5]  
Chen Liang, 2022, EVIDENTIAL NEIGHBORH
[6]  
CIL O, 2022, 36 AAAI C ART INT AA, V7
[7]  
Collins L, 2021, PR MACH LEARN RES, V139
[8]  
Dandi Y, 2022, AAAI CONF ARTIF INTE, P6454
[9]  
Deng J, 2009, PROC CVPR IEEE, P248, DOI 10.1109/CVPRW.2009.5206848
[10]  
Dinh C. T., 2020, Advances in Neural Information Processing Systems, V33, P21394