我为所有,所有为我:分布式流上多个函数的同时逼近

A. Lazerson, Moshe Gabel, D. Keren, A. Schuster
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引用次数: 10

摘要

分布式监控方法解决了在分布式流上连续逼近功能的难题,同时最小化了通信成本。然而,现有的方法只关注一次逼近单个函数。使用这些方法跟踪多个功能会增加通信量,从而首先消除了它们的优势。我们介绍了一种可以应用于多个函数的新方法。我们的方法将通信缩减方案应用于函数集,而不是单独地应用于每个函数,从而保持了较低的通信量。对几个真实世界数据集的评估表明,我们的方法可以在通信减少的情况下跟踪许多函数,在大多数情况下,在单个函数的分布近似上,通信的增加可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One for All and All for One: Simultaneous Approximation of Multiple Functions over Distributed Streams
Distributed monitoring methods address the difficult problem of continuously approximating functions over distributed streams, while minimizing the communication cost. However, existing methods are concerned with the approximation of a single function at a time. Employing these methods to track multiple functions will multiply the communication volume, thus eliminating their advantage in the first place. We introduce a novel approach that can be applied to multiple functions. Our method applies a communication reduction scheme to the set of functions, rather than to each function independently, keeping a low communication volume. Evaluation on several real-world datasets shows that our method can track many functions with reduced communication, in most cases incurring only a negligible increase in communication over distributed approximation of a single function.
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