联邦类增量学习的约束梯度优化策略

IF 8.9 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Jiyuan Feng;Xu Yang;Liwen Liang;Weihong Han;Binxing Fang;Qing Liao
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引用次数: 0

摘要

联邦类增量学习(FCIL)由于其在现实场景中的适用性而成为一种新的学习范式。在FCIL中,客户端不断生成带有不可见类标签的新数据,并且由于隐私限制,不共享本地数据,并且每个客户端的类分布都是动态独立发展的。然而,现有工作仍面临两大挑战。首先,目前的方法在保持对旧数据的良好防遗忘效果(稳定性)和确保对新任务的良好适应性(可塑性)之间缺乏更好的平衡。其次,一些FCIL方法忽略了增量数据也将具有不相同的标签分布,导致性能不佳。本文提出了包含松弛约束梯度更新和跨任务梯度正则化模块的CGoFed。松弛约束的梯度更新防止忘记旧数据的知识,同时通过将梯度更新方向约束到最小干扰历史任务的梯度空间来快速适应新数据。跨任务梯度正则化还从其他客户端找到适用的历史模型,并训练个性化的全局模型来解决不相同的标签分布问题。结果表明,与SOTA比较方法相比,CGoFed在减轻灾难性遗忘方面表现良好,模型性能提高了8% -23%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CGoFed: Constrained Gradient Optimization Strategy for Federated Class Incremental Learning
Federated Class Incremental Learning (FCIL) has emerged as a new paradigm due to its applicability in real-world scenarios. In FCIL, clients continuously generate new data with unseen class labels and do not share local data due to privacy restrictions, and each client’s class distribution evolves dynamically and independently. However, existing work still faces two significant challenges. Firstly, current methods lack a better balance between maintaining sound anti-forgetting effects over old data (stability) and ensuring good adaptability for new tasks (plasticity). Secondly, some FCIL methods overlook that the incremental data will also have a non-identical label distribution, leading to poor performance. This paper proposes CGoFed, which includes relax-constrained gradient update and cross-task gradient regularization modules. The relax-constrained gradient update prevents forgetting the knowledge about old data while quickly adapting to the new data by constraining the gradient update direction to a gradient space that minimizes interference with historical tasks. The cross-task gradient regularization also finds applicable historical models from other clients and trains a personalized global model to address the non-identical label distribution problem. The results demonstrate that the CGoFed performs well in alleviating catastrophic forgetting and improves model performance by 8% -23% compared with the SOTA comparison method.
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来源期刊
IEEE Transactions on Knowledge and Data Engineering
IEEE Transactions on Knowledge and Data Engineering 工程技术-工程:电子与电气
CiteScore
11.70
自引率
3.40%
发文量
515
审稿时长
6 months
期刊介绍: The IEEE Transactions on Knowledge and Data Engineering encompasses knowledge and data engineering aspects within computer science, artificial intelligence, electrical engineering, computer engineering, and related fields. It provides an interdisciplinary platform for disseminating new developments in knowledge and data engineering and explores the practicality of these concepts in both hardware and software. Specific areas covered include knowledge-based and expert systems, AI techniques for knowledge and data management, tools, and methodologies, distributed processing, real-time systems, architectures, data management practices, database design, query languages, security, fault tolerance, statistical databases, algorithms, performance evaluation, and applications.
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