增强深度强化学习:网络优化中的生成扩散模型教程

IF 34.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Communications Surveys and Tutorials Pub Date : 2024-03-10 DOI:10.1109/COMST.2024.3400011
Hongyang Du;Ruichen Zhang;Yinqiu Liu;Jiacheng Wang;Yijing Lin;Zonghang Li;Dusit Niyato;Jiawen Kang;Zehui Xiong;Shuguang Cui;Bo Ai;Haibo Zhou;Dong In Kim
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引用次数: 0

摘要

生成扩散模型(GDM)已成为生成人工智能(GenAI)领域的一股变革力量,在各种应用中展示了其多功能性和有效性。GDM 能够对复杂的数据分布进行建模并生成高质量的样本,因此在图像生成和强化学习等任务中尤为有效。此外,GDM 的迭代性质涉及一系列噪声添加和去噪步骤,是一种强大而独特的学习和生成数据的方法。本文将全面介绍如何在网络优化任务中应用 GDM。我们深入探讨了 GDM 的优势,强调了它在视觉、文本和音频生成等不同领域的广泛适用性。我们将详细介绍如何有效利用 GDM 解决网络中固有的复杂优化问题。本文首先介绍了 GDM 的基本背景及其在网络优化中的应用。随后是一系列案例研究,展示了 GDM 与深度强化学习 (DRL)、激励机制设计、语义通信 (SemCom)、车联网 (IoV) 网络等的整合。这些案例研究强调了 GDM 在现实世界场景中的实用性和有效性,为网络设计提供了启示。最后,我们讨论了 GDM 研究和应用的未来潜在方向,并就如何继续塑造网络优化的未来提出了重要见解。
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Enhancing Deep Reinforcement Learning: A Tutorial on Generative Diffusion Models in Network Optimization
Generative Diffusion Models (GDMs) have emerged as a transformative force in the realm of Generative Artificial Intelligence (GenAI), demonstrating their versatility and efficacy across various applications. The ability to model complex data distributions and generate high-quality samples has made GDMs particularly effective in tasks such as image generation and reinforcement learning. Furthermore, their iterative nature, which involves a series of noise addition and denoising steps, is a powerful and unique approach to learning and generating data. This paper serves as a comprehensive tutorial on applying GDMs in network optimization tasks. We delve into the strengths of GDMs, emphasizing their wide applicability across various domains, such as vision, text, and audio generation. We detail how GDMs can be effectively harnessed to solve complex optimization problems inherent in networks. The paper first provides a basic background of GDMs and their applications in network optimization. This is followed by a series of case studies, showcasing the integration of GDMs with Deep Reinforcement Learning (DRL), incentive mechanism design, Semantic Communications (SemCom), Internet of Vehicles (IoV) networks, etc. These case studies underscore the practicality and efficacy of GDMs in real-world scenarios, offering insights into network design. We conclude with a discussion on potential future directions for GDM research and applications, providing major insights into how they can continue to shape the future of network optimization.
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来源期刊
IEEE Communications Surveys and Tutorials
IEEE Communications Surveys and Tutorials COMPUTER SCIENCE, INFORMATION SYSTEMS-TELECOMMUNICATIONS
CiteScore
80.20
自引率
2.50%
发文量
84
审稿时长
6 months
期刊介绍: IEEE Communications Surveys & Tutorials is an online journal published by the IEEE Communications Society for tutorials and surveys covering all aspects of the communications field. Telecommunications technology is progressing at a rapid pace, and the IEEE Communications Society is committed to providing researchers and other professionals the information and tools to stay abreast. IEEE Communications Surveys and Tutorials focuses on integrating and adding understanding to the existing literature on communications, putting results in context. Whether searching for in-depth information about a familiar area or an introduction into a new area, IEEE Communications Surveys & Tutorials aims to be the premier source of peer-reviewed, comprehensive tutorials and surveys, and pointers to further sources. IEEE Communications Surveys & Tutorials publishes only articles exclusively written for IEEE Communications Surveys & Tutorials and go through a rigorous review process before their publication in the quarterly issues. A tutorial article in the IEEE Communications Surveys & Tutorials should be designed to help the reader to become familiar with and learn something specific about a chosen topic. In contrast, the term survey, as applied here, is defined to mean a survey of the literature. A survey article in IEEE Communications Surveys & Tutorials should provide a comprehensive review of developments in a selected area, covering its development from its inception to its current state and beyond, and illustrating its development through liberal citations from the literature. Both tutorials and surveys should be tutorial in nature and should be written in a style comprehensible to readers outside the specialty of the article.
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