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LoSS Detection Using Parameter's Adjustment Based on Second Order Self- Similarity Statistical Model

机译:基于二阶自我相似性统计模型的参数调整损失检测

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This paper analyzes Loss of Self-Similarity (LoSS) detection accuracy using parameter's adjustment which includes different values of sampling level and correlation lag. This is important when considering exact and asymptotic self-similar models concurrently in the self-similarity parameter estimation method. Due to the needs of high accuracy and fast estimation, the Optimization Method (OM) based on Second Order Self-similarity (SOSS) statistical model was proposed in the previous works to estimate self-similarity parameter. Consequently, Curve Fitting Error (CFE) value estimated from OM is used to detect LoSS efficiently. This work investigates the effect of the parameter's adjustment for improving the CFE accuracy and estimation time speed. We have tested the method with real Internet traffics simulation that consists of normal and malicious packets traffic. Our simulation results show that LoSS detection accuracy and estimation time can be affected by the chosen of sampling level and correlation lag values.
机译:本文分析了使用参数调整的自相似性(损失)检测精度的丧失,包括采样级别和相关滞后的不同值。在自相似度参数估计方法中同时考虑精确和渐近自相似模型,这是重要的。由于高精度和快速估计的需要,在先前的作品中提出了基于二阶自相似性(SOSS)统计模型的优化方法(OM)以估计自相似度参数。因此,从OM估计的曲线拟合误差(CFE)值用于有效地检测损耗。这项工作调查了参数调整对提高CFE精度和估计时间速度的影响。我们已经测试了具有真实互联网流量模拟的方法,包括正常和恶意数据包流量。我们的仿真结果表明,损耗检测精度和估计时间可以受到采样级别和相关滞后值的选择影响。

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