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Efficient Shared Execution Processing of κ-Nearest Neighbor Joins in Road Networks

机译:道路网络中κ最近邻居的有效共享执行处理

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摘要

We investigate the k-nearest neighbor (kNN) join in road networks to determine the k-nearest neighbors (NNs) from a dataset S to every object in another dataset R. The kNN join is a primitive operation and is widely used in many data mining applications. However, it is an expensive operation because it combines the kNN query and the join operation, whereas most existing methods assume the use of the Euclidean distance metric. We alternatively consider the problem of processing kNN joins in road networks where the distance between two points is the length of the shortest path connecting them. We propose a shared execution-based approach called the group-nested loop (GNL) method that can efficiently evaluate kNN joins in road networks by exploiting grouping and shared execution. The GNL method can be easily implemented using existing kNN query algorithms. Extensive experiments using several real-life roadmaps confirm the superior performance and effectiveness of the proposed method in a wide range of problem settings.
机译:我们调查道路网络中的k最近邻(kNN)连接,以确定从数据集S到另一个数据集R中的每个对象的k最近邻(NN)。kNN连接是一种原始运算,已广泛用于许多数据中采矿应用。但是,这是一个昂贵的操作,因为它结合了kNN查询和联接操作,而大多数现有方法都假定使用欧几里德距离度量。我们也可以考虑在道路网络中处理kNN连接的问题,其中两点之间的距离是连接它们的最短路径的长度。我们提出了一种基于共享执行的方法,称为组嵌套循环(GNL)方法,该方法可以通过利用分组和共享执行来有效评估道路网络中的kNN联接。使用现有的kNN查询算法可以轻松实现GNL方法。使用多个现实路线图的大量实验证实了该方法在各种问题设置中的优越性能和有效性。

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  • 来源
    《Mobile Information Systems》 |2018年第1期|1243289.1-1243289.17|共17页
  • 作者

    Cho Hyung-Ju;

  • 作者单位

    Kyungpook Natl Univ, Dept Software, 2559 Gyeongsang Daero, Sangju Si 37224, Gyeongsangbuk D, South Korea;

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  • 正文语种 eng
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