Federated Continual Learning via Knowledge Fusion: A Survey

被引:20
作者
Yang, Xin [1 ]
Yu, Hao [1 ]
Gao, Xin [1 ]
Wang, Hao [2 ]
Zhang, Junbo [3 ,4 ]
Li, Tianrui [5 ]
机构
[1] Southwestern Univ Finance & Econ, Sch Comp & Artificial Intelligence, Complex Lab New Finance & Econ, Chengdu 611130, Sichuan, Peoples R China
[2] Nanyang Technol Univ, Singapore 639798, Singapore
[3] JD Technol, JD iCity, Beijing 101111, Peoples R China
[4] Southwest Jiaotong Univ, JD Intelligent Cities Res & Inst Artificial Intell, Chengdu 611756, Sichuan, Peoples R China
[5] Southwest Jiaotong Univ, Sch Comp & Artificial Intelligence, Chengdu 611756, Sichuan, Peoples R China
基金
北京市自然科学基金;
关键词
Continual learning; federated continual learning; federated learning; knowledge fusion; spatial-temporal catastrophic forgetting; TECHNOLOGIES;
D O I
10.1109/TKDE.2024.3363240
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Data privacy and silos are nontrivial and greatly challenging in many real-world applications. Federated learning is a decentralized approach to training models across multiple local clients without the exchange of raw data from client devices to global servers. However, existing works focus on a static data environment and ignore continual learning from streaming data with incremental tasks. Federated Continual Learning (FCL) is an emerging paradigm to address model learning in both federated and continual learning environments. The key objective of FCL is to fuse heterogeneous knowledge from different clients and retain knowledge of previous tasks while learning on new ones. In this work, we delineate federated learning and continual learning first and then discuss their integration, i.e., FCL, and particular FCL via knowledge fusion. In summary, our motivations are four-fold: we (1) raise a fundamental problem called "spatial-temporal catastrophic forgetting" and evaluate its impact on the performance using a well-known method called federated averaging (FedAvg), (2) integrate most of the existing FCL methods into two generic frameworks, namely synchronous FCL and asynchronous FCL, (3) categorize a large number of methods according to the mechanism involved in knowledge fusion, and finally (4) showcase an outlook on the future work of FCL.
引用
收藏
页码:3832 / 3850
页数:19
相关论文
共 140 条
[1]  
Rusu AA, 2016, Arxiv, DOI [arXiv:1606.04671, DOI 10.48550/ARXIV.1606.04671, DOI 10.43550/ARXIV:1606.04671]
[2]  
Aledhari M, 2020, IEEE ACCESS, V8, P140699, DOI [10.1109/access.2020.3013541, 10.1109/ACCESS.2020.3013541]
[3]   Expert Gate: Lifelong Learning with a Network of Experts [J].
Aljundi, Rahaf ;
Chakravarty, Punarjay ;
Tuytelaars, Tinne .
30TH IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2017), 2017, :7120-7129
[4]  
[Anonymous], 2009, CIFAR-100 Dataset
[5]  
[Anonymous], 2018, Intouch, V25, P1
[6]  
Bagdasaryan E, 2020, PR MACH LEARN RES, V108, P2938
[7]  
Bhagoji S., 2018, P WORKSH SEC MACH LE, P1
[8]  
Bonawitz K., 2019, Proc. Mach. Learn. Syst.
[9]   Federated learning of predictive models from federated Electronic Health Records [J].
Brisimi, Theodora S. ;
Chen, Ruidi ;
Mela, Theofanie ;
Olshevsky, Alex ;
Paschalidis, Ioannis Ch. ;
Shi, Wei .
INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2018, 112 :59-67
[10]   ReLoop: A Self-Correction Continual Learning Loop for Recommender Systems [J].
Cai, Guohao ;
Zhu, Jieming ;
Dai, Quanyu ;
Dong, Zhenhua ;
He, Xiuqiang ;
Tang, Ruiming ;
Zhang, Rui .
PROCEEDINGS OF THE 45TH INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL (SIGIR '22), 2022, :2692-2697