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Detecting Lasting and Abrupt Bursts in Data Streams Using Two-Layered Wavelet Tree

机译:使用两层小波树检测数据流中的持久性和突发性

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Real-time network and telecommunication systems often generate tremendous volume of streaming data. Effective modeling of such streaming data and detecting the bursts with single-scan algorithms pose great challenges. The aim of detecting bursts in data streams is to find anomalous aggregation in stream subsequences. We introduce Lasting Factor and Abrupt Factor in the general definition of burst, in order to characterize how a burst grows in real applications. A novel two-layered wavelet tree structure is designed to detect lasting bursts and abrupt bursts in linear time. Our algorithm reports appearance time range and average aggregate value for lasting bursts, break point position and peak value for abrupt bursts. Theoretical analysis and comparison experiments on the Internet Traffic Archive dataset verify the superiority of our approach over other burst detection algorithms in burst characterization and computation efficiency.
机译:实时网络和电信系统通常会产生大量的流数据。此类流数据的有效建模以及使用单扫描算法检测突发数据构成了巨大的挑战。检测数据流中突发的目的是发现流子序列中的异常聚合。我们在突发的一般定义中引入了“持久因子”和“突发因子”,以表征突发在实际应用中的增长方式。设计了一种新颖的两层小波树结构,以检测线性时间中的持续突发和突发突发。我们的算法报告持续突发的出现时间范围和平均合计值,突发突发的断点位置和峰值。 Internet流量归档数据集上的理论分析和比较实验证明了我们的方法在突发特征和计算效率方面优于其他突发检测算法。

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