异构和类不平衡数据的联邦学习

Hong Peng, Tongtong Wu, Zhenkui Shi, Xianxian Li
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引用次数: 0

摘要

联邦学习(FL)是一种允许多个参与者以数据无法导出的方式合作训练高性能机器学习模型的方案。FL有效保护了所有参与者的数据隐私,降低了通信成本。然而,联邦学习的一个关键挑战是客户机之间的数据异构性。此外,在实际的FL应用中,数据的类分布通常是不平衡的。虽然针对数据异质性问题进行了很多研究,但随着数据的异质性,往往会出现类不平衡问题,导致全局模型的性能不佳。本文通过优化特征提取器和分类器,针对异构数据和局部类不平衡问题,设计了一种新的模糊分类方法(我们称之为FedEF)。FedEF通过对比学习优化单个客户端的局部特征提取器表示,以最大限度地提高本地客户端和中央服务器训练的特征提取器表示的一致性,以处理异构数据。同时,我们对模型中的交叉熵损失进行了修正,对不同类别的数据分配了不同的损失权值,在训练过程中更加关注样本较少的类别,并对有偏差的分类器进行了修正,缓解了类别失衡的问题,从而提高了全局模型的性能。实验表明,FedEF是一种有效的求解异构和局部类不平衡情况下的FL模型的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedEF: Federated Learning for Heterogeneous and Class Imbalance Data
Federated learning (FL) is a scheme that enables multiple participants to cooperate to train a high-performance machine learning model in a way that data cannot be exported. FL effectively protects the data privacy of all participants and reduces communication costs. However, a key challenge for federated learning is the data heterogeneity across clients. In addition, in real FL applications, the class distribution of data is usually unbalanced. Although many researches have been conducted to solve the problem of data heterogeneity, class imbalance problem usually arises along with the heterogeneity data, resulting in the poor performance of the global model. In this paper, a novel FL method (we call it FedEF) is designed for heterogeneous data and local class imbalance problem via optimize feature extractors and classifiers. FedEF optimizes the local feature extractor representation of individual clients through contrastive learning to maximize the consistency of the feature extractor representation trained by the local client and the central server to handle heterogeneous data. Meanwhile, we modified the cross entropy loss in the model, assigned different loss weights to different classes of data, paid more attention to the class with fewer samples in the training process, and corrected the biased classifier to alleviate the problem of class imbalance, thus can improve the performance of the global model. Experiments show that FedEF is an effective solution to FL model obtained under heterogeneous and local class imbalance.
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