FedAcc和FedAccSize:联邦学习应用的聚合方法

Iuliana Bejenar, L. Ferariu, C. Pascal, C. Caruntu
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引用次数: 1

摘要

本文介绍了联邦学习概念的能力,使用共享的全局模型在多个设备之间创建协作,同时仍然保持数据隐私以满足通用数据保护条例(GDPR)。在真实的应用场景中,这个概念面临着与保护全局模型免受可能的攻击以及与非独立和相同分布的数据(non-IID)的兼容性相关的问题。本文提出了两种适用于非iid数据的聚合算法,在保证精度的基础上,对局部模型进行了精细化的聚合。因此,所提出的算法可以细化对每个客户端的信任,消除入侵者,并允许全局模型的安全聚合。针对IID和非IID数据执行的测试场景表明,所提出的算法能够提供更快的训练,并提高了针对入侵者的鲁棒性,比如众所周知的联邦平均算法。
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FedAcc and FedAccSize: Aggregation Methods for Federated Learning Applications
This paper presents the ability of the federated learning concept to create a collaboration between multiple devices using a shared global model, while still keeping data privacy to meet the General Data Protection Regulation (GDPR). In real-world application scenarios, this concept faces problems related to the defense of the global model from possible attacks and the compatibility with non-independent and identically distributed data (non-IID). This paper presents two aggregation algorithms compatible with non-IID data, which use a refined aggregation of the local model, based on their accuracy. Thus, the proposed algorithms can refine the confidence in each client, eliminate intruders and allow a safe aggregation of the global model. Testing scenarios performed for IID and non-IID data illustrate that the proposed algorithms are able to provide faster training and improved robustness against intruders, w.r.t. the well-known federated average algorithm.
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