On the Fly Detection of the Top-K Items in the Distributed Sliding Window Model

E. Anceaume, Yann Busnel, Vasile Cazacu
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引用次数: 3

Abstract

This paper presents a new algorithm that detects on the fly the $k$ most frequent items in the sliding window model. This algorithm is distributed among the nodes of the system. It is inspired by a recent and innovative approach, which consists in associating a stochastic value correlated with the item's frequency instead of trying to estimate its number of occurrences. This stochastic value corresponds to the number of consecutive heads in coin flipping until the first tail occurs. The original approach was to retain just the maximum of consecutive heads obtained by an item, since an item that often occurs will have a higher probability of having a high value. While effective for very skewed data distributions, the correlation is not tight enough to robustly distinguish items with comparable frequencies. To address this important issue, we propose to combine the stochastic approach together with a deterministic counting of items. Specifically, in place of keeping the maximum number of consecutive heads obtained by an item, we count the number of times the coin flipping process of an item has exceeded a given threshold. This threshold is defined by combining theoretical results in leader election and coupon collector problems. Results on simulated data show how impressive is the detection of the top-k items in a large range of distributions.
分布式滑动窗口模型中Top-K项的动态检测
本文提出了一种动态检测滑动窗口模型中k个最频繁项的算法。该算法分布在系统的各个节点上。它的灵感来自于最近的一种创新方法,即将一个与项目频率相关的随机值关联起来,而不是试图估计其出现次数。这个随机值对应于硬币投掷中连续出现正面的次数,直到出现第一个反面。最初的方法是只保留一个项目获得的连续正面的最大值,因为经常出现的项目将有更高的概率具有高值。虽然对非常偏斜的数据分布有效,但相关性不够紧密,无法牢固地区分具有可比频率的项目。为了解决这个重要的问题,我们建议将随机方法与项目的确定性计数结合起来。具体来说,我们不保留一个项目获得的连续正面的最大次数,而是计算一个项目的抛硬币过程超过给定阈值的次数。这个阈值是通过结合领袖选举和券收问题的理论结果来确定的。模拟数据的结果显示,在大范围的分布中检测到top-k项是多么令人印象深刻。
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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