带宽层析成像中基于边界推理和强化学习的路径构建

Cuiying Feng, Jian An, Kui Wu, Jianping Wang
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引用次数: 0

摘要

从端到端路径的带宽推断内部链路的带宽,即所谓的带宽断层扫描,是网络断层扫描文献中一个长期存在的开放问题。困难是由于没有现有的数学工具可以直接适用于求解一组最小方程的逆问题。我们通过设计一个多项式时间算法来系统地解决这一挑战,该算法为所有可识别的链路返回准确的带宽值,并为一组给定的测量路径的不可识别的链路返回最严格的误差界限。在没有事先给出测量路径的情况下,证明了构建测量路径的难度,该路径可用于推导不可识别链路的全局最紧误差界。因此,我们开发了一种用于测量路径构建的强化学习(RL)方法,该方法利用带宽层析成像中的特殊知识,并将离线训练和在线预测相结合。真实ISP和模拟网络的评估结果表明,与Random和Diversity Preferred等其他路径构建方法相比,基于rl的路径构建方法可以构建出更小的链路带宽平均误差边界的测量路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bound Inference and Reinforcement Learning-based Path Construction in Bandwidth Tomography
Inferring the bandwidth of internal links from the bandwidth of end-to-end paths, so-termed bandwidth tomography, is a long-standing open problem in the network tomography literature. The difficulty is due to the fact that no existing mathematical tool is directly applicable to solve the inverse problem with a set of min-equations. We systematically tackle this challenge by designing a polynomial-time algorithm that returns the exact bandwidth value for all identifiable links and the tightest error bound for unidentifiable links for a given set of measurement paths. When measurement paths are not given in advance, we prove the hardness of building measurement paths that can be used for deriving the global tightest error bounds for unidentifiable links. Accordingly, we develop a reinforcement learning (RL) approach for measurement path construction, that utilizes the special knowledge in bandwidth tomography and integrates both offline training and online prediction. Evaluation results with real-world ISP as well as simulated networks demonstrate that compared to other path construction methods, Random and Diversity Preferred, our RL-based path construction method can build measurement paths that result in much smaller average error bound of link bandwidth.
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