Inverted Grid-Based kNN Query Processing with MapReduce

Changqing Ji, Tingting Dong, Yu Li, Yanming Shen, Keqiu Li, Wenming Qiu, W. Qu, M. Guo
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引用次数: 38

Abstract

With the increasing availability of LBS (Location Based Services) and mobile internet, the amount of spatial data is growing larger and larger. It poses new requirements and challenges towards cloud environments, such as how to accomplish efficient index and query processing on large scale spatial data. A scalable and distributed spatial data index is a best choice for the effective processing of the spatial data analysis and query. There are several approaches that implement distributed indices and query processing with MapReduce, such as R-tree and Voronoi-based index. However, R-tree is unsuitable for parallelization and query processing on Voronoi-based index needs extra computation for localization or local index reconstruction. The regularity of grid partition is much easier to scale and parallel comparing with the above two approaches. Inverted Index utilizes limited index entries to index unlimited data points. In this paper, we propose a new distributed spatial data index: Inverted Grid Index, which is a combination of inverted index and grid partition. Our index structure is more simple and suitable for large-scale parallel spatial query application. We present MapReduce-based approaches that both construct Inverted Grid Index and process kNN query over large spatial data sets. Extensive experiments have been done to evaluate the scalability and the performance of kNN query processing on our index structure. The results demonstrate the efficiency and scalability of our kNN query algorithm based on Inverted Grid Index.
基于倒网格的kNN查询处理与MapReduce
随着LBS(基于位置的服务)和移动互联网的日益普及,空间数据量越来越大。这对云环境提出了新的要求和挑战,如如何对大规模空间数据进行高效的索引和查询处理。可扩展的分布式空间数据索引是有效处理空间数据分析和查询的最佳选择。有几种方法可以使用MapReduce实现分布式索引和查询处理,例如R-tree和基于voronoi的索引。然而,R-tree并不适合并行化,并且基于voronoi的索引的查询处理需要额外的本地化或局部索引重建计算。与上述两种方法相比,网格划分的规则性更易于缩放和并行。倒排索引利用有限的索引条目来索引无限的数据点。本文提出了一种新的分布式空间数据索引:倒排索引,它是倒排索引和网格划分的结合。我们的索引结构更简单,适合大规模并行空间查询应用。我们提出了基于mapreduce的方法,既构建倒立网格索引,又处理大型空间数据集上的kNN查询。我们已经做了大量的实验来评估kNN查询处理在我们的索引结构上的可伸缩性和性能。实验结果证明了基于倒网格索引的kNN查询算法的有效性和可扩展性。
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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