作者
Lingyi Cai, Yueyue Dai, Qiwei Hu, Jiaxi Zhou, Yan Zhang, Tao Jiang
发表日期
2024/5/24
期刊
IEEE Transactions on Network Science and Engineering
出版商
IEEE
简介
The sixth-generation (6 G) wireless networks are envisioned to build a data-driven digital world with widespread Artificial Intelligence (AI). Federated learning (FL) is a distributed AI paradigm that coordinates different data owners to train shared AI models cooperatively. However, traditional FL faces challenges in practically deploying in 6 G networks: (i) the central server becomes the bottleneck and fails to identify clients' malicious behaviors, and (ii) the lack of incentive mechanisms makes heterogeneous nodes hard to collaborate when considering unilateral returns. To address the above challenges, we first propose a blockchain-enabled FL (BFL) framework where clients' malicious behaviors could be identified without a central server. Then we propose a Bayesian game-driven incentive mechanism to encourage honest nodes to provide valid models while hindering the training interference from malicious clients …
学术搜索中的文章
L Cai, Y Dai, Q Hu, J Zhou, Y Zhang, T Jiang - IEEE Transactions on Network Science and …, 2024