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On Set Size Distribution Estimation and the Characterization of Large Networks via Sampling

机译:集规模分布估计和大型网络的抽样表征

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In this work we study the set size distribution estimation problem, where elements are randomly sampled from a collection of non-overlapping sets and we seek to recover the original set size distribution from the samples. This problem has applications to capacity planning and network theory. Examples of real-world applications include characterizing in-degree distributions in large graphs and uncovering TCP/IP flow size distributions on the Internet. We demonstrate that it is difficult to estimate the original set size distribution. The recoverability of original set size distributions presents a sharp threshold with respect to the fraction of elements that remain in the sets. If this fraction lies below the threshold, typically half of the elements in power-law and heavier-than-exponential-tailed distributions, then the original set size distribution is unrecoverable. We also discuss practical implications of our findings.
机译:在这项工作中,我们研究了集合大小分布估计问题,其中从非重叠集合的集合中随机抽取元素,并尝试从样本中恢复原始集合大小分布。此问题已应用于容量规划和网络理论。实际应用程序的示例包括表征大型图中的度数分布以及在Internet上发现TCP / IP流大小分布。我们证明了很难估计原始集合的大小分布。原始集合大小分布的可恢复性相对于集合中剩余的元素比例提出了一个严格的阈值。如果该分数低于阈值,通常是幂律分布中一半的元素,并且重于指数尾分布,则原始集合大小分布将无法恢复。我们还将讨论研究结果的实际含义。

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