A key functionality of emerging connected autonomous systems such as smart cities, smart transportation systems, and the industrial Internet-of-Things, is the ability to process and learn from data collected at different physical locations. This is increasingly attracting attention under the terms of distributed learning and federated learning. However, in connected autonomous systems, data transfer takes place over communication networks with often limited resources. This paper examines algorithms for communication-efficient learning for linear regression tasks by exploiting the informativeness of the data. The developed algorithms enable a tradeoff between communication and learning with theoretical performance guarantees and efficient practical implementations.
翻译:智能城市、智能运输系统和工业互联网等新兴的连接自主系统的一个关键功能是能够处理和学习在不同物理地点收集的数据,这日益引起对分布式学习和联合学习的注意;然而,在连接的自主系统中,数据传输是通过往往资源有限的通信网络进行的,本文件通过利用数据的丰富性来审查线性回归任务通信高效学习的算法;发达的算法使得通信和学习之间能够以理论性能保障和有效的实际实施来进行权衡。