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Detection and Characterization of Network Anomalies in Large-Scale RTT Time Series

机译:大型RTT时间序列网络异常的检测与表征

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摘要

Network anomalies, such as wide-area congestion and packet loss, can seriously degrade network performance. To this end, it is critical to accurately identify network anomalies on end-to-end paths for high quality network services in practice. In this work, we propose an unsupervised two-step method for the detection and characterization of general network anomalies. It first finds the change-points in large-scale RTT time series by formalizing an optimization problem in terms of data series segmentation. Then we mark the segments as normal or abnormal on different sides of a change-point through exploitation of their distribution statistics. After detecting an anomaly, a further step is introduced to analyze the relations between links with state changes and localize the entities (nodes or links) that most likely cause the corresponding event. We believe such unsupervised and light-weighed method can provide valuable insights on anomaly mining in large-scale time series data. Extensive experiments on both simulated (artificial time series with ground truth) and real-network (RIPE Atlas traceroute measurements) datasets are performed. The results demonstrate that the proposed method can achieve better performance, w.r.t. accuracy and efficiency, than existing solutions.
机译:网络异常,如广域拥塞和数据包丢失,可以严重降低网络性能。为此,在实践中准确地识别高质量网络服务的端到端路径上的网络异常至关重要。在这项工作中,我们提出了一种无监督的两步方法,用于检测和表征一般网络异常。它首先通过在数据序列分割方面正式化优化问题来找到大型RTT时间序列中的变化点。然后,我们通过开发其分发统计来将段标记为正常或异常的变更点。在检测到异常之后,引入了进一步的步骤以分析与状态更改的链路之间的关系,并本地化最有可能导致相应事件的实体(节点或链接)。我们相信这种无监督和较轻的方法可以在大规模时间序列数据中提供对异常挖掘的有价值的见解。对模拟(人工时间序列与地面真理)和实际网络(成熟Atlas Traceroute测量)进行广泛的实验。结果表明,该方法可以实现更好的性能W.r.t.比现有解决方案的准确性和效率。

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