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Probabilistic Lossy Counting: An efficient algorithm for finding heavy hitters

机译:概率有损计数:查找重击手的有效算法

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摘要

Knowledge of the largest traffic flows in a network is important for many network management applications. The problem of finding these flows is known as the heavy-hitter problem and has been the subject of many studies in the past years. One of the most efficient and well-known algorithms for finding heavy hitters is lossy counting [29].rnIn this work we introduce probabilistic lossy counting (PLC), which enhances lossy counting in computing network traffic heavy hitters. PLC uses on a tighter error bound on the estimated sizes of traffic flows and provides probabilistic rather than deterministic guarantees on its accuracy. The probabilistic-based error bound substantially improves the memory consumption of the algorithm. In addition, PLC reduces the rate of false positives of lossy counting and achieves a low estimation error, although slightly higher than that of lossy counting.rnWe compare PLC with state-of-the-art algorithms for finding heavy hitters. Our experiments using real traffic traces find that PLC has 1) between 34.4% and 74% lower memory consumption, 2) between 37.9% and 40.5% fewer false positives than lossy counting, and 3) a small estimation error.
机译:对于许多网络管理应用程序,了解网络中最大的流量非常重要。查找这些流的问题被称为“重击问题”,并且在过去几年中已成为许多研究的主题。查找重击者的最有效,最著名的算法之一就是有损计数[29]。在这项工作中,我们介绍了概率有损计数(PLC),它可以提高计算网络流量重击中者的有损计数。 PLC在估计的流量大小上使用更严格的误差,并为其准确性提供了概率而非确定性保证。基于概率的错误范围大大改善了算法的内存消耗。此外,PLC减少了有损计数的误报率,并实现了较低的估计误差,尽管它比有损计数的误报率略高。我们将PLC与最先进的算法进行比较,以找到击球手。我们使用真实流量跟踪的实验发现,PLC的误报率比有损计数低1)34.4%到74%,2)误报率比有损计数低37.9%到40.5%,并且3)估计误差小。

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