网络拥塞预测的可推广和可解释深度学习

Konstantinos Poularakis, Qiaofeng Qin, Franck Le, S. Kompella, L. Tassiulas
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引用次数: 6

摘要

虽然近年来将深度学习(DL)应用于网络系统的趋势稳定,但大多数底层深度神经网络(dnn)都存在两个主要限制。首先,它们不能泛化到训练中看不到的拓扑。这种泛化性的缺乏阻碍了dnn在每次网络系统拓扑变化时做出正确决策的能力。其次,现有的深度神经网络通常以“黑盒子”的形式运行,难以被网络运营商解读,阻碍了它们在实践中的部署。在本文中,我们建议依靠最近开发的基于图的深度神经网络来解决上述限制。更具体地说,我们专注于网络拥塞预测应用程序,并应用图注意(GAT)模型,使用图拓扑和链路负载的时间序列作为输入,对每个链路进行拥塞预测。对三个真实骨干网的评估表明,我们提出的方法在预测准确性、通用性和可解释性方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalizable and Interpretable Deep Learning for Network Congestion Prediction
While recent years have witnessed a steady trend of applying Deep Learning (DL) to networking systems, most of the underlying Deep Neural Networks (DNNs) suffer two major limitations. First, they fail to generalize to topologies unseen during training. This lack of generalizability hampers the ability of the DNNs to make good decisions every time the topology of the networking system changes. Second, existing DNNs commonly operate as "blackboxes" that are difficult to interpret by network operators, and hinder their deployment in practice. In this paper, we propose to rely on a recently developed family of graph-based DNNs to address the aforementioned limitations. More specifically, we focus on a network congestion prediction application and apply Graph Attention (GAT) models to make congestion predictions per link using the graph topology and time series of link loads as inputs. Evaluations on three real backbone networks demonstrate the benefits of our proposed approach in terms of prediction accuracy, generalizability, and interpretability.
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