A2N2: approximate aggregate nearest neighbor queries on road networks

Saranya Sadasivam, A. Baba, Wei-Shinn Ku, Haiquan Chen
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引用次数: 1

Abstract

Aggregate nearest neighbor queries return a point with a minimum net distance from a set of query points. Consider, for example, group of friends located at specific locations (query points) that want to meet at a restaurant (a point) such that they travel the minimum sum of distances in order to meet. In this paper, we proposed a fast algorithm, A2N2, to answer such aggregate nearest neighbor queries on road networks based on pre-computation. An assortment of optimized data structures and techniques are used so as to reduce the overall computation time. Additionally, by focusing on reducing the amount of pre-computed data stored and using efficient ways to retrieve and use them during query time, the algorithm is computationally faster at the cost of being minimally approximate. Experiments on real road network data sets demonstrate the impact of input parameters on the query processing time and supports the claim. It was observed that the pre-computation time and query processing time for A2N2 was respectively in the orders of up to 1000 and 100 times faster than that of a Voronoi based ANN approach. The minimum normalized path distance deviation across all data sets for A2N2 was only 2% with the computed path distances comparable to a Voronoi based approach.
A2N2:路网上最近邻查询的近似聚合
聚合最近邻查询返回与一组查询点的净距离最小的点。例如,考虑位于特定位置(查询点)的一组朋友,他们希望在餐厅(点)见面,以便他们旅行的距离最小。在本文中,我们提出了一种基于预计算的快速算法A2N2来回答道路网络上的这种聚合最近邻查询。使用了各种优化的数据结构和技术,以减少总体计算时间。此外,通过专注于减少存储的预计算数据量,并在查询期间使用有效的方法检索和使用它们,该算法在计算速度上更快,但代价是最小化近似。在真实路网数据集上的实验证明了输入参数对查询处理时间的影响,并支持了该说法。结果表明,A2N2的预计算时间和查询处理时间分别比基于Voronoi的ANN方法快1000倍和100倍。A2N2所有数据集的最小归一化路径距离偏差仅为2%,计算的路径距离与基于Voronoi的方法相当。
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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