Finding (recently) frequent items in distributed data streams

A. Manjhi, Vladislav Shkapenyuk, Kedar Dhamdhere, Christopher Olston
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引用次数: 216

Abstract

We consider the problem of maintaining frequency counts for items occurring frequently in the union of multiple distributed data streams. Naive methods of combining approximate frequency counts from multiple nodes tend to result in excessively large data structures that are costly to transfer among nodes. To minimize communication requirements, the degree of precision maintained by each node while counting item frequencies must be managed carefully. We introduce the concept of a precision gradient for managing precision when nodes are arranged in a hierarchical communication structure. We then study the optimization problem of how to set the precision gradient so as to minimize communication, and provide optimal solutions that minimize worst-case communication load over all possible inputs. We then introduce a variant designed to perform well in practice, with input data that does not conform to worst-case characteristics. We verify the effectiveness of our approach empirically using real-world data, and show that our methods incur substantially less communication than naive approaches while providing the same error guarantees on answers.
在分布式数据流中查找(最近)频繁的项
我们考虑维护多个分布式数据流联合中频繁出现的项目的频率计数问题。结合多个节点的近似频率计数的朴素方法往往会导致过大的数据结构,在节点之间传输的成本很高。为了尽量减少通信需求,每个节点在计算项目频率时保持的精度必须仔细管理。我们引入了精度梯度的概念来管理节点在分层通信结构中的精度。然后,我们研究了如何设置精度梯度以最小化通信的优化问题,并提供了在所有可能的输入中最小化最坏情况通信负载的最优解。然后,我们引入了一个设计在实践中表现良好的变体,其输入数据不符合最坏情况特征。我们使用真实世界的数据验证了我们方法的有效性,并表明我们的方法比幼稚的方法产生的沟通要少得多,同时提供了相同的错误保证。
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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