基于特征的联合转移学习:通信效率、鲁棒性和隐私

Feng Wang;M. Cenk Gursoy;Senem Velipasalar
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引用次数: 0

摘要

在本文中,我们提出了基于特征的联合传输学习,作为一种提高通信效率的新方法,与联合学习和联合传输学习中的现有方法相比,它能将上行链路有效载荷减少多个数量级。具体来说,在所提出的基于特征的联合学习中,我们设计将提取的特征和输出上传,而不是参数更新。对于这种分布式学习模型,我们确定了所需的有效载荷,并提供了与现有方案的比较。随后,我们分析了基于特征的联合传输学习对丢包、数据不足和量化的鲁棒性。最后,我们通过定义和分析标签隐私泄露和特征隐私泄露,并研究缓解方法,来解决隐私问题。对于上述所有分析,我们通过图像分类任务和自然语言处理任务的实验来评估所提出的学习方案的性能,以证明其有效性 (https://github.com/wfwf10/Feature-based-Federated-Transfer-Learning)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature-Based Federated Transfer Learning: Communication Efficiency, Robustness and Privacy
In this paper, we propose feature-based federated transfer learning as a novel approach to improve communication efficiency by reducing the uplink payload by multiple orders of magnitude compared to that of existing approaches in federated learning and federated transfer learning. Specifically, in the proposed feature-based federated learning, we design the extracted features and outputs to be uploaded instead of parameter updates. For this distributed learning model, we determine the required payload and provide comparisons with the existing schemes. Subsequently, we analyze the robustness of feature-based federated transfer learning against packet loss, data insufficiency, and quantization. Finally, we address privacy considerations by defining and analyzing label privacy leakage and feature privacy leakage, and investigating mitigating approaches. For all aforementioned analyses, we evaluate the performance of the proposed learning scheme via experiments on an image classification task and a natural language processing task to demonstrate its effectiveness ( https://github.com/wfwf10/Feature-based-Federated-Transfer-Learning ).
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