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Neural Tensor Completion for Accurate Network Monitoring

机译:神经张量完成以进行精确的网络监控

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Monitoring the performance of a large network is very costly. Instead, a subset of paths or time intervals of the network can be measured while inferring the remaining network data by leveraging their spatiotemporal correlations. The quality of missing data recovery highly relies on the inference algorithms. Tensor completion has attracted some recent attentions with its capability of exploiting the multi-dimensional data structure for more accurate missing data inference. However, current tensor completion algorithms only model the three-order interaction of data features through the inner product, which is insufficient to capture the high-order, nonlinear correlations across different feature dimensions. In this paper, we propose a novel Neural Tensor Completion (NTC) scheme to effectively model three-order interaction among data features with the outer product and build a 3D interaction map. Based on which, we apply 3D convolution to learn features of high-order interaction from the local range to the global range. We demonstrate this will lead to good learning ability. We conduct extensive experiments on two real-world network monitoring datasets, Abilene and WS-DREAM, to demonstrate that NTC can significantly reduce the error in missing data recovery. When the sampling ratio is low at 1%, the recovery error ratios on the testing data are around 0.05 (Abilene) and 0.13 (WS-DREAM) when using NTC, but are 0.99 (Abilene) and 0.99 (WS-DREAM) using the best current tensor completion algorithms, which are 21 times and 8 times larger.
机译:监视大型网络的性能非常昂贵。取而代之的是,可以测量网络的路径或时间间隔的子集,同时通过利用它们的时空相关性推断剩余的网络数据。丢失数据恢复的质量高度依赖于推理算法。 Tensor完成凭借其利用多维数据结构进行更准确的缺失数据推断的能力吸引了一些近期的关注。但是,当前的张量完成算法仅通过内部乘积来建模数据特征的三阶交互,这不足以捕获跨不同特征维度的高阶非线性相关性。在本文中,我们提出了一种新颖的神经张量补全(NTC)方案,可以有效地建模数据特征与外部产品之间的三阶交互,并构建3D交互图。在此基础上,我们应用3D卷积来学习从局部范围到全局范围的高阶交互作用的特征。我们证明这将导致良好的学习能力。我们对两个实际的网络监视数据集Abilene和WS-DREAM进行了广泛的实验,以证明NTC可以大大减少丢失数据恢复中的错误。当采样率低至1%时,使用NTC时测试数据的回收率误差约为0.05(Abilene)和0.13(WS-DREAM),而使用NTC时分别为0.99(Abilene)和0.99(WS-DREAM)。最佳的当前张量完成算法,分别为21倍和8倍。

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