Privacy Assessment of Federated Learning Using Private Personalized Layers

T. Jourdan, A. Boutet, Carole Frindel
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引用次数: 5

Abstract

Federated Learning (FL) is a collaborative scheme to train a learning model across multiple participants without sharing data. While FL is a clear step forward towards enforcing users' privacy, different inference attacks have been developed. In this paper, we quantify the utility and privacy trade-off of a FL scheme using private personalized layers. While this scheme has been proposed as local adaptation to improve the accuracy of the model through local personalization, it has also the advantage to minimize the information about the model exchanged with the server. However, the privacy of such a scheme has never been quantified. Our evaluations using motion sensor dataset show that personalized layers speed up the convergence of the model and slightly improve the accuracy for all users compared to a standard FL scheme while better preventing both attribute and membership inferences compared to a FL scheme using local differential privacy.
使用私有个性化层的联邦学习隐私评估
联邦学习(FL)是一种在不共享数据的情况下跨多个参与者训练学习模型的协作方案。虽然FL是向加强用户隐私迈出的明确一步,但不同的推理攻击已经被开发出来。在本文中,我们量化了使用私有个性化层的FL方案的效用和隐私权衡。虽然该方案被提出作为局部适应,通过局部个性化来提高模型的准确性,但它也具有最小化与服务器交换的关于模型的信息的优点。然而,这种方案的隐私性从未被量化。我们使用运动传感器数据集的评估表明,与标准FL方案相比,个性化层加快了模型的收敛速度,并略微提高了所有用户的准确性,同时与使用局部差分隐私的FL方案相比,可以更好地防止属性和成员推断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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