计算机科学
异步通信
联合学习
效率低下
块链
高效能源利用
块(置换群论)
脆弱性(计算)
熵(时间箭头)
人工智能
分布式计算
机器学习
计算机网络
计算机安全
物理
几何学
数学
量子力学
电气工程
经济
微观经济学
工程类
作者
Lei Feng,Yiqi Zhao,Shaoyong Guo,Xuesong Qiu,Wenjing Li,Peng Yu
标识
DOI:10.1109/tc.2021.3072033
摘要
As an emerging distributed machine learning (ML) method, federated learning (FL) can protect data privacy through collaborative learning of artificial intelligence (AI) models across a large number of devices. However, inefficiency and vulnerability to poisoning attacks have slowed FL performance. Therefore, a blockchain-based asynchronous federated learning (BAFL) framework is proposed to ensure the security and efficiency required by FL. The blockchain ensures that the model data cannot be tampered with while asynchronous learning speeds up global aggregation. A novel entropy weight method is used to evaluate the participating rank and proportion of the local model trained in BAFL of the devices. The energy consumption and local model update efficiency are balanced by adjusting the local training and communication delay and optimizing the block generation rate. The extensive evaluation results show that the proposed BAFL framework has higher efficiency and higher performance for preventing poisoning attacks than other distributed ML methods.
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