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Processing Location-Based Aggregate Queries in Road Networks

机译:处理道路网络中基于位置的总查询

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In recent years, the research community has introduced various methods for processing the location-based queries on a single type of objects in road networks. However, in real-life applications user may be interested in obtaining information about different types of objects, in terms of their neighboring relationship. The sets of different types of objects closer to each other are termed the heterogeneous neighboring object sets (or HNO sets for short). To provide users with object information by considering both the spatial closeness of objects to the query object and the neighboring relationship between objects, we present useful and important location-based aggregate queries on finding the HNO sets in road net-works. The location-based aggregate queries are the shortest average distance query (SAvgDQ), the shortest minimal distance query (SMinDQ), the shortest maximal distance query (SMaxDQ), and the shortest sum distance query (SSumDQ). We first utilize a grid index to manage information of data objects and road networks, and then propose the SAvgDQ, SMinDQ, SMaxDQ, and SSumDQ processing algorithms, which are combined with the grid index to efficiently process the four types of location-based aggregate queries, respectively. A comprehensive set of experiments is conducted to demonstrate the efficiency of the proposed processing algorithms using real road network datasets.
机译:近年来,研究界介绍了在道路网络中的单一类型对象上处理基于位置的查询的各种方法。然而,在现实生活中,用户可能有兴趣在其相邻关系方面获取有关不同类型对象的信息。彼此彼此靠近的不同类型对象的组被称为异构相邻对象集(或短的HNO集)。通过将对象的空间闭合和对象之间的相邻关系考虑对象的空间闭合,为用户提供对象信息,我们呈现了在Road Net-Works中查找HNO集的有用和重要的基于位置的聚合查询。基于位置的聚合查询是最短的平均距离查询(SAVGDQ),最短最小距离查询(SMIDQ),最短的最大距离查询(SMAXDQ)以及最短的总和距离查询(SSUMDQ)。我们首先利用网格索引来管理数据对象和道路网络的信息,然后提出SAVGDQ,SMINDQ,SMAXDQ和SSUMDQ处理算法,该算法与网格索引组合以有效地处理基于某种基于位置的聚合查询, 分别。进行了一套全面的实验,以展示使用真正的道路网络数据集提出的加工算法的效率。

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