Estimating the Frequency of Data Items in Massive Distributed Streams

E. Anceaume, Yann Busnel, Nicolo Rivetti
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引用次数: 7

Abstract

We investigate the problem of estimating on the fly the frequency at which items recur in large scale distributed data streams, which has become the norm in cloud-based application. This paper presents CASE, a combination of tools and probabilistic algorithms from the data streaming model. In this model, functions are estimated on a huge sequence of data items, in an online fashion, and with a very small amount of memory with respect to both the size of the input stream and the values domain from which data items are drawn. We derive upper and lower bounds on the quality of CASE, improving upon the Count-Min sketch algorithm which has, so far, been the best algorithm in terms of space and time performance to estimate the frequency of data items. We prove that CASE guarantees an (e, d)-approximation of the frequency of all the items, provided they are not rare, in a space- efficient way and for any input stream. Experiments on both synthetic and real datasets confirm our analysis.
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大规模分布式流中数据项频率的估计
我们研究了在大规模分布式数据流中动态估计项目出现频率的问题,这在基于云的应用中已经成为常态。本文提出了CASE,它是数据流模型中工具和概率算法的结合。在此模型中,以在线方式对大量数据项序列进行函数估计,并且相对于输入流的大小和从中绘制数据项的值域而言,使用非常少的内存。我们推导了CASE质量的上界和下界,改进了Count-Min草图算法,该算法迄今为止在空间和时间性能方面是估计数据项频率的最佳算法。我们证明了CASE保证了所有项目频率的(e, d)近似值,只要它们不是稀有的,以一种空间有效的方式并且对于任何输入流。在合成数据集和真实数据集上的实验证实了我们的分析。
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