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Efficient K-nearest neighbor search in time-dependent spatial networks

机译:时变空间网络中的有效K最近邻搜索

摘要

The class of k Nearest Neighbor (k NN) queries in spatial networks has been studied in the literature. Existing approaches for k NN search in spatial networks assume that the weight of each edge in the spatial network is constant. However, real-world edge-weights are time-dependent and vary significantly in short durations, hence invalidating the existing solutions. The problem of k NN search in time-dependent spatial networks, where the weight of each edge is a function of time, is addressed herein. Two indexing schemes (Tight Network Index and Loose Network Index) are proposed to minimize the number of candidate nearest neighbor objects and reduce the invocation of the expensive fastest-path computation in time-dependent spatial networks. We demonstrate the efficiency of our proposed solution via experimental evaluations with real-world data-sets, including a variety of large spatial networks with real traffic-data.
机译:文献中已经研究了空间网络中的k个最近邻居(k NN)查询的类别。在空间网络中用于k NN搜索的现有方法假定空间网络中每个边的权重是恒定的。但是,现实世界中的边缘权重与时间有关,并且在短时间内变化很大,因此使现有解决方案无效。本文解决了时间相关的空间网络中的k NN搜索问题,其中每个边缘的权重是时间的函数。提出了两种索引方案(紧网络索引和松散网络索引)以最小化候选最近邻居对象的数量并减少对时变空间网络中昂贵的最快路径计算的调用。我们通过对真实数据集(包括各种具有真实交通数据的大型空间网络)进行实验评估,证明了我们提出的解决方案的效率。

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