Monochromatic RkNN queries in time-dependent road networks

Felix Borutta, M. Nascimento, Johannes Niedermayer, Peer Kröger
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引用次数: 10

Abstract

The problem of finding influence sets for a specific point, e.g. determining the influence of a location for a new restaurant on competitive restaurants, can be modeled as the reverse k nearest neighbor (RkNN) query. Although a lot of research has already been published on this topic, there is no adequate solution to solve the problem in time-dependent networks. In this work, we address RkNN queries in networks considering time-dependency, e.g. in road networks where traffic conditions influence the travel speed. Due to that the reverse nearest neighbors set can change over time, even if the objects are assumed to be static. We present an algorithm that solves the monochromatic time-dependent RkNN problem efficiently for a specific point in time. This algorithm uses a pruning technique to minimize the necessary network expansion. Furthermore, we present a variant of the algorithm which uses apriori knowledge from a pre-processing step to save further network expansion. Finally, we compare the proposed methods for monochromatic queries to a simple baseline approach by using time-dependent road networks of different sizes, various densities for the points of interests and various values for k. The results show that our proposed algorithms are orders of magnitude faster than a straightforward alternative.
时变路网中的单色RkNN查询
寻找特定点的影响集的问题,例如确定新餐厅的位置对竞争餐厅的影响,可以建模为反向k最近邻(RkNN)查询。虽然这方面的研究已经发表了很多,但对于时变网络中的这一问题,目前还没有足够的解决方案。在这项工作中,我们在考虑时间依赖性的网络中解决RkNN查询,例如在交通状况影响行驶速度的道路网络中。因此,即使假设对象是静态的,反向最近邻设置也会随着时间的推移而改变。提出了一种针对特定时间点有效求解单色时变RkNN问题的算法。该算法使用修剪技术来最小化必要的网络扩展。此外,我们提出了一种算法的变体,该算法使用来自预处理步骤的先验知识来节省进一步的网络扩展。最后,我们通过使用不同大小、不同兴趣点密度和不同k值的时间相关道路网络,将提出的单色查询方法与简单的基线方法进行比较。结果表明,我们提出的算法比直接替代方法快几个数量级。
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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