论文标题

当机器学习达到拥塞控制时:调查和比较

When Machine Learning Meets Congestion Control: A Survey and Comparison

论文作者

Jiang, Huiling, Li, Qing, Jiang, Yong, Shen, Gengbiao, Sinnott, Richard, Tian, Chen, Xu, Mingwei

论文摘要

机器学习(ML)在许多不同的应用中看到了大量的激增和吸收。它提供的高灵活性,适应性和计算功能扩展了在包括网络操作和管理在内的多个字段中使用的传统方法。在网络的背景下,已经探索了ML的许多调查,例如流量工程,性能优化和网络安全性。许多ML方法着重于聚类,分类,回归和增强学习(RL)。这项研究和本文的贡献的创新在于基于学习的拥塞控制(CC)方法的详细摘要和比较。与通常基于规则的传统CC算法相比,从历史经验中学习的能力是非常可取的。从文献中可以看出,RL是基于学习的CC算法的关键趋势。在本文中,我们探讨了基于RL的CC算法的性能,并介绍了基于RL的CC算法的当前问题。我们概述了与基于学习的CC算法有关的挑战和趋势。

Machine learning (ML) has seen a significant surge and uptake across many diverse applications. The high flexibility, adaptability and computing capabilities it provides extends traditional approaches used in multiple fields including network operation and management. Numerous surveys have explored ML in the context of networking, such as traffic engineering, performance optimization and network security. Many ML approaches focus on clustering, classification, regression and reinforcement learning (RL). The innovation of this research and contribution of this paper lies in the detailed summary and comparison of learning-based congestion control (CC) approaches. Compared with traditional CC algorithms which are typically rule-based, capabilities to learn from historical experience are highly desirable. From the literature, it is observed that RL is a crucial trend among learning-based CC algorithms. In this paper, we explore the performance of RL-based CC algorithms and present current problems with RL-based CC algorithms. We outline challenges and trends related to learning-based CC algorithms.

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