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Anomaly-Tolerant Network Traffic Estimation via Noise-Immune Temporal Matrix Completion Model

机译:基于噪声免疫时间矩阵完成模型的容错网络流量估计

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Accurately estimating origin-destination (OD) network traffic is crucial for network management and capacity planning. However, the potential network anomaly and complex noise make this goal difficult to achieve. Existing network traffic estimation methods usually impute network traffic independent of anomaly detection, which ignores the potential relationship between the two tasks to help each other in achieving better performance. Moreover, these approaches can only be suitable for simple Gaussian or outlier noise assumptions, which cannot be applied to more complex noise distributions in practical applications. To address these issues, we propose a novel anomaly-tolerant network traffic estimation approach for simultaneously estimating network traffic and detecting network anomaly. Specifically, by utilizing the inherent low-rank property and temporal characteristic of traffic matrix, we formulate the network traffic estimation problem as a noise-immune temporal matrix completion (NiTMC) model, where the complex noise is fitted by mixture of Gaussian (MoG), and the network anomaly is smoothed by the L-2(,1)-norm regularization. In addition, we also design a convergence-guaranteed optimization algorithm based on the expectation maximization (EM) and block coordinate update (BCU) methods to solve the proposed model. Furthermore, to deal with large-scale network problems, we develop a scalable and memory-efficient algorithm by employing stochastic proximal gradient descent (SPGD) method. Finally, the extensive experiments performed on real datasets demonstrate that our proposed NiTMC model outperforms the previously widely used network traffic estimation methods.
机译:准确估计原始目的地(OD)网络流量对于网络管理和容量规划至关重要。但是,潜在的网络异常和复杂的噪声使该目标难以实现。现有的网络流量估计方法通常独立于异常检测来估算网络流量,该方法忽略了两个任务之间的潜在关系,以相互帮助实现更好的性能。此外,这些方法仅适用于简单的高斯或离群值噪声假设,在实际应用中不能应用于更复杂的噪声分布。为了解决这些问题,我们提出了一种新颖的容错网络流量估计方法,用于同时估计网络流量和检测网络异常。具体来说,通过利用流量矩阵固有的低秩特性和时间特性,我们将网络流量估计问题公式化为抗噪声的时间矩阵完成(NiTMC)模型,其中复杂噪声由高斯(MoG)混合拟合,并且通过L-2(,1)-范数正则化来平滑网络异常。此外,我们还基于期望最大化(EM)和块坐标更新(BCU)方法设计了一种可保证收敛的优化算法,以解决该模型。此外,为了解决大规模网络问题,我们通过采用随机近端梯度下降(SPGD)方法开发了一种可扩展且内存高效的算法。最后,在真实数据集上进行的大量实验表明,我们提出的NiTMC模型优于以前广泛使用的网络流量估算方法。

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