作者
Sajjad Khan, Jorao Gomes Jr, Muhammad Habib ur Rehman, Davor Svetinovic
发表日期
2023/12/1
期刊
Internet of Things
卷号
24
页码范围
100956
出版商
Elsevier
简介
Decentralized Federated Learning (DFL) is a prevalent approach to efficiently train deep learning models and preserve privacy by sharing model gradients instead of the local data. However, participants in the DFL may opt to adopt a dynamic behavior for personal gains. The existing DFL models cannot differentiate between the adaptive behavior of the participants in the massively distributed environments and assume that all the participants are honest. As a result, free riders or malicious participants remain undetected and not penalized. In this paper, we present a DFL architecture where decentralized participants assess the behavior of each other using the quality of gradients. A novel dynamic reputation assessment protocol is implemented to detect and eliminate participants with adaptive behavior. The proposed architecture is evaluated using behavior-based attacks in a decentralized environment by …
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