稀疏个性化联邦类增量学习

IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS
Youchao Liu, Dingjiang Huang
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引用次数: 0

摘要

最近,联邦学习(FL)通过在分散的客户端上执行数据私有协作训练而引起了越来越多的关注。然而,大多数现有的FL方法都集中在具有静态数据的单任务场景上。在现实场景中,本地客户端通常会不断地从数据流中收集新类,并且只有少量内存来存储旧类的训练样本。直接使用单任务模型会导致旧课程中严重的灾难性遗忘。此外,在FL场景中还存在一些典型的挑战,如计算和通信开销、数据异构等。为了全面描述这些挑战,我们提出了一个新的个性化联邦类增量学习(PFCIL)问题。此外,我们提出了一种创新的稀疏个性化联邦类增量学习(SpaPFCIL)框架,该框架通过稀疏训练为每个客户端学习个性化类增量模型来解决这一问题。与大多数基于知识提炼的方法不同,我们的框架不需要额外的数据来辅助。具体来说,为了解决类增量任务带来的灾难性遗忘,我们使用可扩展的类增量模型而不是单任务模型。对于FL中的典型挑战,我们使用动态稀疏训练来定制客户端的稀疏局部模型。它减轻了数据异质性和过度参数化的负面影响。我们的框架在代表性基准数据集的平均准确率方面优于最先进的方法,准确率为3.3%至43.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse personalized federated class-incremental learning
Recently federated learning (FL) has attracted growing attention by performing data-private collaborative training on decentralized clients. However, the majority of existing FL methods concentrate on single-task scenarios with static data. In real-world scenarios, local clients usually continuously collect new classes from the data stream and have just a small amount of memory to store training samples of old classes. Using single-task models directly will lead to significant catastrophic forgetting in old classes. In addition, there are some typical challenges in FL scenarios, such as computation and communication overhead, data heterogeneity, etc. To comprehensively describe these challenges, we propose a new Personalized Federated Class-Incremental Learning (PFCIL) problem. Furthermore, we propose an innovative Sparse Personalized Federated Class-Incremental Learning (SpaPFCIL) framework that learns a personalized class-incremental model for each client through sparse training to solve this problem. Unlike most knowledge distillation-based methods, our framework does not require additional data to assist. Specifically, to tackle catastrophic forgetting brought by class-incremental tasks, we utilize expandable class-incremental models instead of single-task models. For typical challenges in FL, we use dynamic sparse training to customize sparse local models on clients. It alleviates the negative effects of data heterogeneity and over-parameterization. Our framework outperforms state-of-the-art methods in terms of average accuracy on representative benchmark datasets by 3.3% to 43.6%.
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来源期刊
Information Sciences
Information Sciences 工程技术-计算机:信息系统
CiteScore
14.00
自引率
17.30%
发文量
1322
审稿时长
10.4 months
期刊介绍: Informatics and Computer Science Intelligent Systems Applications is an esteemed international journal that focuses on publishing original and creative research findings in the field of information sciences. We also feature a limited number of timely tutorial and surveying contributions. Our journal aims to cater to a diverse audience, including researchers, developers, managers, strategic planners, graduate students, and anyone interested in staying up-to-date with cutting-edge research in information science, knowledge engineering, and intelligent systems. While readers are expected to share a common interest in information science, they come from varying backgrounds such as engineering, mathematics, statistics, physics, computer science, cell biology, molecular biology, management science, cognitive science, neurobiology, behavioral sciences, and biochemistry.
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