Privacy Enhanced Federated Learning Utilizing Differential Privacy and Interplanetary File System

Hyowon Kim, Inshil Doh
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引用次数: 2

Abstract

As the Internet of Things (IoT) grows exponentially, it is becoming deeply embedded in our daily lives. As the quantity and quality of data produced by devices have also gradually increased, there have been increasing attempts to use these useful IoT big data for various applications and to combine IoT with machine learning and deep learning to process a large amount of useful data. However, in the centralized deep learning method, privacy issues have been raised because the server can use personal data collected from the user’s IoT. Due to this reason, Federated Learning (FL) method that can protect users' personal data while doing machine learning has been studied. However, current FL also has the possibility of data poisoning attacks and other problems. Therefore, this work, by suggesting distributed FL framework combined with Interplanetary File System and Differential Privacy, proposes a method that allows users to participate in FL safely and efficiently. Through this method, participants share some parts of data, and these data are collected by specific nodes. These data are combined to make a new dataset of FL network for defending against data poisoning attack and vouch for training’s accuracy. Also, an aggregation mechanism is proposed to suppress the effect of a malicious node poisoning attack. Finally, this framework is tested in python environment. With this method, one can freely open a project and anyone can join in with distributed condition, even when he or she has no enough dataset for learning but computing capability, vice versa. If a malicious node tries to interrupt the learning with poisoned dataset, aggregation mechanism and combined validation set from the network’s nodes will suppress the bad effect. We have tested through python and open-source code to verify the efficiency and privacy.
利用差分隐私和星际文件系统的隐私增强联邦学习
随着物联网(IoT)呈指数级增长,它正深入我们的日常生活。随着设备产生的数据的数量和质量也逐渐提高,越来越多的人尝试将这些有用的物联网大数据用于各种应用,并将物联网与机器学习和深度学习相结合,处理大量有用的数据。然而,在集中式深度学习方法中,由于服务器可以使用从用户物联网收集的个人数据,因此引发了隐私问题。因此,人们研究了在进行机器学习的同时保护用户个人数据的联邦学习(FL)方法。但是,目前的FL还存在数据中毒攻击的可能性等问题。因此,本工作通过提出结合星际文件系统和差分隐私的分布式FL框架,提出了一种允许用户安全高效地参与FL的方法。通过这种方法,参与者共享部分数据,这些数据由特定节点收集。将这些数据组合成一个新的FL网络数据集,用于防御数据中毒攻击,保证训练的准确性。同时,提出了一种聚合机制来抑制恶意节点中毒攻击的影响。最后,在python环境下对该框架进行了测试。通过这种方法,即使没有足够的学习数据,但只有计算能力,也可以自由地打开项目,任何人都可以在分布式条件下加入,反之亦然。当恶意节点试图用有毒数据集中断学习时,网络节点的聚合机制和联合验证集将抑制这种不良影响。我们已经通过python和开源代码进行了测试,以验证效率和隐私。
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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