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Evaluating and Boosting Reinforcement Learning for Intra-Domain Routing

机译:评估和提高域内路由中的增强学习

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The success of machine learning in domains such as computer vision and computer games has triggered a surge of interest in applying machine learning in computer networks. This paper tries to answer a broadly-debated question: can we improve the performance of intradomain routing, one of the most fundamental blocks in the Internet, with reinforcement learning (RL)? Due to the complex network traffic conditions and the large action space in routing, it is difficult to give a definite answer for existing RL-based routing solutions. To gain an in-depth understanding on the challenges of RL-based routing, we systematically classify different RL-based routing solutions and investigate the performance of several representative approaches, in terms of scalability, stability, robustness, and convergence. With the lessons learned in evaluating various RL-based routing solutions, we propose two methods, called supervised Q-network routing (SQR) and discrete link weight-based routing (DLWR), which boost the performance of RL-based routing and outperform the de facto shortest path intradomain routing.
机译:计算机视觉和计算机游戏等域中机器学习的成功引发了对计算机网络中的机器学习的兴趣激增。本文试图回答一项广泛讨论的问题:我们可以提高境内路由的表现,互联网中最基本的块之一,加强学习(RL)吗?由于网络流量条件复杂和路由中的大动作空间,难以为现有的基于RL的路由解决方案提供明确的答案。为了深入了解基于RL的路由的挑战,我们系统地对基于RL的路由解决方案进行了系统地进行了分类,并在可扩展性,稳定性,鲁棒性和收敛方面调查几种代表方法的性能。通过在评估各种基于RL的路由解决方案时学习的经验教训,我们提出了两种方法,称为监督Q-Network路由(SQR)和基于离散的链路基于基于链路的路由(DLWR),这提高了基于RL的路由和优于胜过的性能事实上最短的境内路线。

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