Efficiently Summarizing Data Streams over Sliding Windows

Nicolo Rivetti, Yann Busnel, A. Mostéfaoui
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引用次数: 23

Abstract

Estimating the frequency of any piece of information in large-scale distributed data streams became of utmost importance in the last decade (e.g., in the context of network monitoring, big data, etc.). If some elegant solutions have been proposed recently, their approximation is computed from the inception of the stream. In a runtime distributed context, one would prefer to gather information only about the recent past. This may be led by the need to save resources or by the fact that recent information is more relevant. In this paper, we consider the sliding window model and propose two different (on-line) algorithms that approximate the items frequency in the active window. More precisely, we determine a (ε, δ)-additive-approximation meaning that the error is greater than ε only with probability δ. These solutions use a very small amount of memory with respect to the size N of the window and the number n of distinct items of the stream, namely, O(1/ε log 1/δ (log N+log n)) and O(1/τε log 1/δ (log N+log n)) bits of space, where τ is a parameter limiting memory usage. We also provide their distributed variant, i.e., considering the sliding window functional monitoring model. We compared the proposed algorithms to each other and also to the state of the art through extensive experiments on synthetic traces and real data sets that validate the robustness and accuracy of our algorithms.
有效地总结滑动窗口上的数据流
估计大规模分布式数据流中任何一条信息的频率在过去十年中变得至关重要(例如,在网络监控,大数据等背景下)。如果最近提出了一些优雅的解决方案,则从流的开始计算它们的近似值。在运行时分布式上下文中,人们更愿意只收集最近的信息。这可能是由于需要节省资源,或者由于最近的信息更相关。在本文中,我们考虑滑动窗口模型,并提出了两种不同的(在线)算法来近似活动窗口中的项目频率。更准确地说,我们确定了(ε, δ)-加性近似,这意味着误差仅以概率δ大于ε。相对于窗口的大小N和流中不同项的数量N而言,这些解决方案使用的内存非常少,即O(1/ε log 1/δ (log N+log N))和O(1/τε log 1/δ (log N+log N))位空间,其中τ是限制内存使用的参数。我们还提供了它们的分布式变体,即考虑滑动窗口功能监控模型。我们通过对合成轨迹和真实数据集进行广泛的实验,将所提出的算法相互比较,并将其与最先进的算法进行比较,以验证我们算法的鲁棒性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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