Denoising Internet Delay Measurements using Weak Supervision

A. Muthukumar, Ramakrishnan Durairajan
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引用次数: 3

Abstract

To understand the delay characteristics of the Internet, a myriad of measurement tools and techniques are proposed by the researchers in academia and industry. Datasets from such measurement tools are curated to facilitate analyses at a later time. Despite the benefits of these tools and datasets, the systematic interpretation of measurements in the face of measurement noise. Unfortunately, state-of-the-art denoising techniques are labor-intensive and ineffective. To tackle this problem, we develop NoMoNoise, an open-source framework for denoising latency measurements by leveraging the recent advancements in weak-supervised learning. NoMoNoise can generate measurement noise labels that could be integrated into the inference and control logic to remove and/or repair noisy measurements in an automated and rapid fashion. We evaluate the efficacy of NoMoNoise in a lab-based setting and a real-world setting by applying it on CAIDA's Ark dataset and show that NoMoNoise can remove noisy measurements effectively with high accuracy.
基于弱监督的网络时延测量去噪
为了了解互联网的延迟特性,学术界和工业界的研究人员提出了无数的测量工具和技术。来自这些测量工具的数据集经过整理,以方便以后的分析。尽管这些工具和数据集有好处,但面对测量噪声的测量系统解释。不幸的是,最先进的去噪技术是劳动密集型和无效的。为了解决这个问题,我们开发了NoMoNoise,这是一个开源框架,通过利用弱监督学习的最新进展来去噪延迟测量。NoMoNoise可以生成测量噪声标签,可以集成到推理和控制逻辑中,以自动和快速的方式去除和/或修复噪声测量。我们通过将NoMoNoise应用于CAIDA的Ark数据集,在实验室环境和现实环境中评估了NoMoNoise的有效性,并表明NoMoNoise可以有效地去除噪声测量,并且精度很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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