Wider coverage and a better solution to a latency reduction in 5G necessitate its combination with multi-access edge computing (MEC) technology. Decentralized deep learning (DDL) such as federated learning and swarm learning as a promising solution to privacy-preserving data processing for millions of smart edge devices, leverages distributed computing of multi-layer neural networks within the networking of local clients, whereas, without disclosing the original local training data. Notably, in industries such as finance and healthcare where sensitive data of transactions and personal medical records is cautiously maintained, DDL can facilitate the collaboration among these institutes to improve the performance of trained models while protecting the data privacy of participating clients. In this survey paper, we demonstrate the technical fundamentals of DDL that benefit many walks of society through decentralized learning. Furthermore, we offer a comprehensive overview of the current state-of-the-art in the field by outlining the challenges of DDL and the most relevant solutions from novel perspectives of communication efficiency and trustworthiness.
翻译:分散的深层次学习(DDL),例如联合学习和群成学习,作为保护数百万智能边缘装置的隐私数据处理的有希望的解决办法,利用当地客户网络内多层神经网络的分布式计算,而不披露原始的当地培训数据。值得注意的是,在诸如财务和保健等行业,交易和个人医疗记录敏感数据得到谨慎维护,DDL可以促进这些研究所之间的合作,以改进经过训练的模型的性能,同时保护参与客户的数据隐私。我们在本调查文件中展示DDL的技术基础,通过分散学习使许多社会阶层受益。此外,我们还从通信效率和信任的新角度,概述DL的挑战和最相关的解决办法,从而全面概述目前该领域的艺术状况。