作者
Yuanhang Qi, M Shamim Hossain, Jiangtian Nie, Xuandi Li
发表日期
2021/4/1
期刊
Future Generation Computer Systems
卷号
117
页码范围
328-337
出版商
North-Holland
简介
As accurate and timely traffic flow information is extremely important for traffic management, traffic flow prediction has become a vital component of intelligent transportation systems. However, existing traffic flow prediction methods based on centralized machine learning need to gather raw data for model training, which involves serious privacy exposure risks. To address these problems, federated learning that shares model updates without exchanging raw data, has recently been introduced as an efficient solution for achieving privacy protection. However, the existing federated learning frameworks are based on a centralized model coordinator that still suffers from severe security challenges, such as a single point of failure. Thereby, a consortium blockchain-based federated learning framework is proposed to enable decentralized, reliable, and secure federated learning without a centralized model coordinator. In …
引用总数
学术搜索中的文章