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A Survey on Federated Learning: The Journey From Centralized to Distributed On-Site Learning and Beyond

机译:关于联合学习的调查:从集中到分发现场学习的旅程

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摘要

Driven by privacy concerns and the visions of deep learning, the last four years have witnessed a paradigm shift in the applicability mechanism of machine learning (ML). An emerging model, called federated learning (FL), is rising above both centralized systems and on-site analysis, to be a new fashioned design for ML implementation. It is a privacy-preserving decentralized approach, which keeps raw data on devices and involves local ML training while eliminating data communication overhead. A federation of the learned and shared models is then performed on a central server to aggregate and share the built knowledge among participants. This article starts by examining and comparing different ML-based deployment architectures, followed by in-depth and in-breadth investigation on FL. Compared to the existing reviews in the field, we provide in this survey a new classification of FL topics and research fields based on thorough analysis of the main technical challenges and current related work. In this context, we elaborate comprehensive taxonomies covering various challenging aspects, contributions, and trends in the literature, including core system models and designs, application areas, privacy and security, and resource management. Furthermore, we discuss important challenges and open research directions toward more robust FL systems.
机译:受私隐问题的推动和深度学习的愿景,过去四年目睹了机器学习(ML)的适用机制的范式转变。一个名为联合学习(FL)的新兴模型正在上升到既有集中系统和现场分析,都是一种新的形式设计,用于ML实现。它是一种隐私保留的分散方法,它在设备上保留原始数据,并涉及本地ML培训,同时消除数据通信开销。然后在中央服务器上执行学习和共享模型的联合,以聚合和共享参与者之间的内置知识。本文首先检查和比较不同的基于ML的部署架构,然后对FL进行深入和广泛的调查。与现有领域的审查相比,我们在本次调查中提供了基于对主要技术挑战和当前相关工作的全面分析的新分类。在这方面,我们详细说明了涵盖了文献中的各种具有挑战性的方面,贡献和趋势的综合分类,包括核心系统模型和设计,应用领域,隐私和安全以及资源管理。此外,我们讨论了对更强大的FL系统的重要挑战和开放的研究方向。

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