在异质联合学习中,向他人学习,做自己

Wenke Huang, Mang Ye, Bo Du
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引用次数: 62

摘要

联邦学习已经成为一种重要的分布式学习范式,它通常涉及与他人的协作更新和对私有数据的本地更新。然而,异质性问题和灾难性遗忘带来了不同的挑战。首先,由于非i -i。D(相同和独立分布的)数据和异构架构,模型在其他领域遭受性能下降和与参与者模型的通信障碍。其次,在局部更新中,模型是针对私有数据单独优化的,容易出现过拟合当前数据分布,忘记之前获得的知识,导致灾难性遗忘。在这项工作中,我们提出了FCCL(联邦相互关系和持续学习)。针对异构性问题,FCCL利用未标记的公共数据进行通信,构建相互关联矩阵,学习域移位下的可推广表示。同时,对于灾难性遗忘,FCCL在局部更新中利用知识蒸馏,在不泄露隐私的情况下提供域间和域内信息。在各种图像分类任务上的实验结果证明了我们的方法的有效性和模块的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learn from Others and Be Yourself in Heterogeneous Federated Learning
Federated learning has emerged as an important distributed learning paradigm, which normally involves collaborative updating with others and local updating on private data. However, heterogeneity problem and catastrophic forgetting bring distinctive challenges. First, due to non-i.i.d (identically and independently distributed) data and heterogeneous architectures, models suffer performance degradation on other domains and communication barrier with participants models. Second, in local updating, model is separately optimized on private data, which is prone to overfit current data distribution and forgets previously acquired knowledge, resulting in catastrophic forgetting. In this work, we propose FCCL (Federated CrossCorrelation and Continual Learning). For heterogeneity problem, FCCL leverages unlabeled public data for communication and construct cross-correlation matrix to learn a generalizable representation under domain shift. Mean- while, for catastrophic forgetting, FCCL utilizes knowledge distillation in local updating, providing inter and intra domain information without leaking privacy. Empirical results on various image classification tasks demonstrate the effectiveness of our method and the efficiency of modules.
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