张量分解在动态网络中的精确异常检测

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Xiaocan Li;Jigang Wen;Kun Xie;Gaogang Xie;Wei Liang
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引用次数: 0

摘要

准确检测流量异常在网络管理中变得越来越重要。将交通数据建模为矩阵的算法检测精度较低,而使用张量模型的工作通常假设张量是规则的,而没有考虑网络节点可能动态加入或离开,这在实际网络中由于节点集的移动和流失行为的变化而失败。我们提出了一种新的动态网络(TRDN)中的张量恢复方案,将交通数据建模为一个实用的不规则张量,用于准确的异常检测。为了利用小张量之间的相关性,每个张量都在短时间内形成,以捕获数据中更多隐藏的信息,从而提高检测精度,我们提出了几种新技术:1)一种新的联合张量分解模型,用于捕获小张量公共节点共享的特征;2)一种张量划分算法,用于识别可用于有效训练共享参数的数据;3)一种基于条的算法,将节点划分为最小数量的无重叠子集,形成共享张量模型。在Abilene和GÈANT两个互联网流量数据集上进行的大量实验证明了所提出的TRDN的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tensor Factorization for Accurate Anomaly Detection in Dynamic Networks
Accurately detecting traffic anomalies becomes increasingly crucial in network management. Algorithms that model the traffic data as a matrix suffers from low detection accuracy, while the work using the tensor model often assumes the tensor is regular without considering that network nodes may dynamically join in or leave, which will fail in a practical network with the change of node set as a result of mobility and churn behaviors. We propose a novel Tensor Recovery scheme in a Dynamic Network (TRDN) with traffic data modeled as a practical irregular tensor for accurate anomaly detection. To take advantage of correlations among small tensors, each formed with a short time duration to capture more hidden information in the data for higher detection accuracy, we propose several novel techniques: 1) a new joint tensor factorization model to capture the characteristic shared by the common nodes of small tensors, 2) a tensor partition algorithm to identify the data that can be applied to train the shared parameters efficiently, and 3) a bar-based algorithm that partitions nodes into the minimum number of no-overlapping subsets to form the shared tensor model. Extensive experiments on two Internet traffic data sets, Abilene and GÈANT, demonstrate the effectiveness of the proposed TRDN.
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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