Neural Collaborative Filtering for Network Delay Matrix Completion

Sanaa Ghandi, Alexandre Reiffers-Masson, Sandrine Vaton, T. Chonavel
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Abstract

In network monitoring, delays are of great use when it comes to QoS or content distributed services. However, it is often impossible to have access to all the delay measurements within a network. This can be due to network failures or to established measurement policies. For these reasons, delay matrix completion techniques are important for an optimal network monitoring service. In this paper, we formulate the completion problem as a neural collaborative filtering problem by testing two different architectures, generalized matrix factorization and multi-layer perceptron. We evaluate these methods on two different datasets: a synthetic one generated by an autonomous system simulator, and a real-world dataset from Ripe Atlas platform. Finally, a comparative study is conducted between these neural collaborative filtering methods and standard approaches.
网络延迟矩阵补全的神经协同滤波
在网络监控中,当涉及到QoS或内容分布式服务时,延迟是非常有用的。然而,通常不可能访问网络中的所有延迟测量。这可能是由于网络故障或已建立的度量策略。由于这些原因,延迟矩阵补全技术对于优化网络监控服务非常重要。在本文中,我们通过测试两种不同的架构,即广义矩阵分解和多层感知器,将补全问题表述为神经协同过滤问题。我们在两个不同的数据集上对这些方法进行了评估:一个是由自主系统模拟器生成的合成数据集,另一个是来自Ripe Atlas平台的真实数据集。最后,将这些神经协同过滤方法与标准方法进行了比较研究。
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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