Cost-Efficient Spatial Network Partitioning for Distance-Based Query Processing

Jiping Wang, Kai Zheng, Hoyoung Jeung, Haozhou Wang, Bolong Zheng, Xiaofang Zhou
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引用次数: 8

Abstract

The efficiency of spatial query processing is crucial for many applications such as location-based services. In spatial networks, queries like k-NN queries are all based on network distance evaluation. Classic solutions for these queries rely on network expansion and are not efficient enough for large networks. Some approaches have improved the query efficiency but brought considerable space cost for index. To address these problems, we propose a hierarchical graph partitioning based index named Partition Tree. It organizes the vertices of a spatial network into a hierarchy through a series of graph partitioning processes. Meanwhile precomputed distances are associated with this hierarchy to facilitate efficient query processing. Inspired by the observation that queries are usually invoked around objects of interest, we propose a query-oriented optimization on top of the Partition Tree. It uses a cost model to evaluate the influence of the object distribution and partitioning topology on the query efficiency. Then a cost-efficient graph partitioning method is developed based on this cost model. Experimental results on real datasets demonstrate that our proposed index and algorithms have superior performance over the state-of-the-art approaches and are scalable to large spatial networks.
基于距离查询处理的高效空间网络分区
空间查询处理的效率对于许多应用程序(如基于位置的服务)至关重要。在空间网络中,像k-NN这样的查询都是基于网络距离评估的。这些查询的经典解决方案依赖于网络扩展,对于大型网络来说效率不够高。有些方法在提高查询效率的同时,也带来了可观的索引空间成本。为了解决这些问题,我们提出了一种基于分层图分区的索引——分区树。它通过一系列的图划分过程将空间网络的顶点组织成层次结构。同时,预先计算的距离与该层次结构相关联,以促进高效的查询处理。由于观察到查询通常是围绕感兴趣的对象调用的,我们提出了一个基于分区树的面向查询的优化。它使用代价模型来评估对象分布和分区拓扑对查询效率的影响。然后在此代价模型的基础上,提出了一种具有成本效益的图划分方法。在真实数据集上的实验结果表明,我们提出的索引和算法比最先进的方法具有更好的性能,并且可扩展到大型空间网络。
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