The sixth generation (6G) wireless systems are envisioned to enable the paradigm shift from "connected things" to "connected intelligence", featured by ultra high density, large-scale, dynamic heterogeneity, diversified functional requirements and machine learning capabilities, which leads to a growing need for highly efficient intelligent algorithms. The classic optimization-based algorithms usually require highly precise mathematical model of data links and suffer from poor performance with high computational cost in realistic 6G applications. Based on domain knowledge (e.g., optimization models and theoretical tools), machine learning (ML) stands out as a promising and viable methodology for many complex large-scale optimization problems in 6G, due to its superior performance, generalizability, computational efficiency and robustness. In this paper, we systematically review the most representative "learning to optimize" techniques in diverse domains of 6G wireless networks by identifying the inherent feature of the underlying optimization problem and investigating the specifically designed ML frameworks from the perspective of optimization. In particular, we will cover algorithm unrolling, learning to branch-and-bound, graph neural network for structured optimization, deep reinforcement learning for stochastic optimization, end-to-end learning for semantic optimization, as well as federated learning for distributed optimization, for solving challenging large-scale optimization problems arising from various important wireless applications. Through the in-depth discussion, we shed light on the excellent performance of ML-based optimization algorithms with respect to the classical methods, and provide insightful guidance to develop advanced ML techniques in 6G networks.
翻译:第六代(6G)无线系统的设想是,能够将特高密度、大规模、动态异质、功能要求多样化和机器学习能力等特高密度、大规模、动态异质性能、功能要求和机器学习能力等特效、导致对高效智能算法的需求日益增长的范式从“连接的东西”向“连接情报”的范式转变。传统的优化型算法通常需要非常精确的数据链接数学模型,在现实的6G应用中由于计算成本高而表现不佳。根据域知识(例如优化模型和理论工具),机器学习(ML)是6G中许多复杂的大规模优化问题的有希望和可行的方法,因为其性能、通用性能、计算效率和稳健性能。 在本文中,我们系统地审查6G无线网络中最具代表性的“学习优化”技术,找出最根本优化问题的内在特征,并从优化角度研究专门设计的ML框架。我们将基于域知识(例如优化)的算法,学习到处型、直线线网,以结构优化为结构优化、深度强化学习6C级优化的深层优化技术,从大规模优化学习系统优化技术,从升级到优化应用。