Solutions for Processing K Nearest Neighbor Joins for Massive Data on MapReduce

Ge Song, Justine Rochas, F. Huet, F. Magoulès
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引用次数: 29

Abstract

Given a point p and a set of points S, the kNN operation finds the k closest points to p in S. It is a computational intensive task with a large range of applications such as knowledge discovery or data mining. However, as the volume and the dimension of data increase, only distributed approaches can perform such costly operation in a reasonable time. Recent works have focused on implementing efficient solutions using the MapReduce programming model because it is suitable for large scale data processing. Also, it can easily be executed in a distributed environment. Although these works provide different solutions to the same problem, each one has particular constraints and properties. There is no readily available comparison to help users choose the one most appropriate for their needs. This is the problem we address in this work. Firstly, we show that all kNN implementations go through a common workflow, which we use as a basis for classification. Secondly, we describe precisely the different techniques published so far. And lastly, we provide a set of objective criteria that can be used to make informed decisions.
MapReduce处理海量数据K近邻连接的解决方案
给定一个点p和一组点S, kNN运算在S中找到离p最近的k个点。这是一项计算密集型任务,具有广泛的应用,如知识发现或数据挖掘。然而,随着数据量和维数的增加,只有分布式方法才能在合理的时间内执行这种昂贵的操作。最近的工作主要集中在使用MapReduce编程模型实现高效的解决方案,因为它适合大规模数据处理。此外,它可以很容易地在分布式环境中执行。虽然这些作品为同一个问题提供了不同的解决方案,但每一个都有特定的约束和属性。没有现成的比较来帮助用户选择最适合他们需求的产品。这是我们在这项工作中要解决的问题。首先,我们展示了所有kNN实现都经过一个共同的工作流,我们将其用作分类的基础。其次,我们精确地描述了迄今为止发表的不同技术。最后,我们提供了一套客观的标准,可以用来做出明智的决定。
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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