聚合前对齐:通过一致特征提取实现跨域联邦学习

Guogang Zhu, Xuefeng Liu, Shaojie Tang, Jianwei Niu
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引用次数: 4

摘要

联邦学习(FL)是一种新兴的机器学习范例,其中多个分布式客户端协作训练模型,而无需集中收集原始数据。在FL设置中,常见的情况是本地客户端的数据来自不同的域,例如不同的手机拍摄的照片由于成像参数的不同,在强度和对比度上存在差异。在这种跨域情况下,从不同客户端数据中提取的特征在特征空间中会相互偏离,导致所谓的特征转移。特征移位会降低特征的辨识度,降低学习模型的性能。然而,大多数现有的FL方法并不是专门为跨域设置而设计的。在本文中,我们提出了一种新的跨域FL方法,命名为AlignFed。在AlignFed中,每个客户机上的模型被分离为个性化的特征提取器和共享的分类器。前者通过将不同客户端的特征与特征空间中的特定点对齐来提取客户端的一致特征。后者在一致的特征空间上聚合跨客户端的知识,这可以减轻跨域FL中由特征转移引起的性能下降。我们在常用的多域数据集上进行了实验,包括Digits-Five, Office-Caltech10和DomainNet。实验结果表明,AlignFed可以优于目前最先进的FL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。
Aligning before Aggregating: Enabling Cross-domain Federated Learning via Consistent Feature Extraction
Federated learning (FL) is an emerging machine learning paradigm where multiple distributed clients collaboratively train a model without centrally collecting their raw data. In FL setting, it is a common case that the data on local clients come from different domains, e.g., photos taken by different mobile phones can vary in intensity and contrast due to the difference of imaging parameters. In such a cross-domain case, features extracted from data of different clients deviate from each other in the feature space, leading to the so-called feature shift. The feature shift can reduce the discrimination of features and degrade the performance of the learned model. However, most existing FL methods are not particularly designed for cross-domain setting. In this paper, we propose a novel cross-domain FL method, named AlignFed. In AlignFed, the model on each client is separated to a personalized feature extractor and a shared classifier. The former extracts consistent features among clients by aligning features of different clients to some specific points in the feature space. The latter aggregates the knowledge across clients over the consistent feature space, which can mitigate the performance degradation caused by the feature shift in cross-domain FL. We conduct experiments on common-used multi-domain datasets, including Digits-Five, Office-Caltech10, and DomainNet. The experimental results demonstrate that AlignFed can outperform the state-of-art FL methods.
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