SR-FDIL: Synergistic Replay for Federated Domain-Incremental Learning

IF 5.6 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS IEEE Transactions on Parallel and Distributed Systems Pub Date : 2024-08-02 DOI:10.1109/TPDS.2024.3436874
Yichen Li;Wenchao Xu;Yining Qi;Haozhao Wang;Ruixuan Li;Song Guo
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Abstract

Federated Learning (FL) is to allow multiple clients to collaboratively train a model while keeping their data locally. However, existing FL approaches typically assume that the data in each client is static and fixed, which cannot account for incremental data with domain shift, leading to catastrophic forgetting on previous domains, particularly when clients are common edge devices that may lack enough storage to retain full samples of each domain. To tackle this challenge, we propose F ederated D omain- I ncremental L earning via S ynergistic R eplay (SR-FDIL), which alleviates catastrophic forgetting by coordinating all clients to cache samples and replay them. More specifically, when new data arrives, each client selects the cached samples based not only on their importance in the local dataset but also on their correlation with the global dataset. Moreover, to achieve a balance between learning new data and memorizing old data, we propose a novel client selection mechanism by jointly considering the importance of both old and new data. We conducted extensive experiments on several datasets of which the results demonstrate that SR-FDIL outperforms state-of-the-art methods by up to 4.05% in terms of average accuracy of all domains.
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SR-FDIL:联合领域增量学习的协同重放
联合学习(FL)是允许多个客户端协同训练一个模型,同时在本地保存各自的数据。然而,现有的联合学习方法通常假定每个客户端的数据都是静态和固定的,这就无法解释域转移带来的数据增量,从而导致对先前域的灾难性遗忘,特别是当客户端是普通边缘设备时,可能缺乏足够的存储来保留每个域的完整样本。为了应对这一挑战,我们提出了通过协同重放进行联合域增量学习(SR-FDIL),通过协调所有客户端缓存样本并重放它们来缓解灾难性遗忘。更具体地说,当新数据到来时,每个客户端不仅会根据样本在本地数据集中的重要性,还会根据样本与全局数据集的相关性来选择缓存样本。此外,为了在学习新数据和记忆旧数据之间取得平衡,我们提出了一种新颖的客户端选择机制,即共同考虑新旧数据的重要性。我们在多个数据集上进行了广泛的实验,结果表明,SR-FDIL 在所有领域的平均准确率方面比最先进的方法高出 4.05%。
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来源期刊
IEEE Transactions on Parallel and Distributed Systems
IEEE Transactions on Parallel and Distributed Systems 工程技术-工程:电子与电气
CiteScore
11.00
自引率
9.40%
发文量
281
审稿时长
5.6 months
期刊介绍: IEEE Transactions on Parallel and Distributed Systems (TPDS) is published monthly. It publishes a range of papers, comments on previously published papers, and survey articles that deal with the parallel and distributed systems research areas of current importance to our readers. Particular areas of interest include, but are not limited to: a) Parallel and distributed algorithms, focusing on topics such as: models of computation; numerical, combinatorial, and data-intensive parallel algorithms, scalability of algorithms and data structures for parallel and distributed systems, communication and synchronization protocols, network algorithms, scheduling, and load balancing. b) Applications of parallel and distributed computing, including computational and data-enabled science and engineering, big data applications, parallel crowd sourcing, large-scale social network analysis, management of big data, cloud and grid computing, scientific and biomedical applications, mobile computing, and cyber-physical systems. c) Parallel and distributed architectures, including architectures for instruction-level and thread-level parallelism; design, analysis, implementation, fault resilience and performance measurements of multiple-processor systems; multicore processors, heterogeneous many-core systems; petascale and exascale systems designs; novel big data architectures; special purpose architectures, including graphics processors, signal processors, network processors, media accelerators, and other special purpose processors and accelerators; impact of technology on architecture; network and interconnect architectures; parallel I/O and storage systems; architecture of the memory hierarchy; power-efficient and green computing architectures; dependable architectures; and performance modeling and evaluation. d) Parallel and distributed software, including parallel and multicore programming languages and compilers, runtime systems, operating systems, Internet computing and web services, resource management including green computing, middleware for grids, clouds, and data centers, libraries, performance modeling and evaluation, parallel programming paradigms, and programming environments and tools.
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