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Estimating heavy-tails in long-range dependent wireless traffic

机译:估计与远程相关的无线流量中的重尾

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Wireless traffic and packet-based traffic in general possess heavy-tail marginal distributions and long-range dependence (LRD). The tail parameter /spl alpha/ of a heavy-tail distribution controls the variability of its realizations. Several traffic models, statistical test and resource management algorithms rely on the accurate estimation of the tail parameter. Conventional estimators for the tail parameter only work well when the data is short range dependent. In this paper we propose a new method to estimate the tail parameter from LRD data. This is achieved by utilizing the wavelet transform and extreme value theory. The algorithm is then applied to two stochastic processes that possess both heavy-tail marginal distributions and LRD. Results from our simulation show that the proposed method gives good estimates of /spl alpha/. We then estimate the tail parameter from a recently collected IEEE 802.11b traffic trace.
机译:无线流量和基于数据包的流量通常具有重尾边缘分布和远距离依赖关系(LRD)。重尾分布的尾部参数/ spl alpha /控制其实现的可变性。几种流量模型,统计测试和资源管理算法都依赖于尾部参数的准确估计。尾部参数的常规估计器仅在数据与短程相关时才有效。在本文中,我们提出了一种从LRD数据估计尾部参数的新方法。这是通过利用小波变换和极值理论来实现的。然后将该算法应用于同时具有重尾边际分布和LRD的两个随机过程。我们的仿真结果表明,所提出的方法对/ spl alpha /给出了很好的估计。然后,我们从最近收集的IEEE 802.11b流量跟踪中估算出tail参数。

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