Efficient Evaluation of Shortest Average Distance Query on Heterogeneous Neighboring Objects in Road Networks

Yuan-Ko Huang, Chun-Hsing Su, Chiang Lee, Chu-Hung Ho
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引用次数: 1

Abstract

Recently, 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 (HNOSs for short). In this paper, we present a novel type of location-based queries, the shortest average distance query (SADQ for short), on the HNOSs in road networks. Given a query object q and a distance d, the SADQ retrieves a HNOS, such that the road distances between any two objects in this set are less than or equal to d and its average road distance to q is the shortest among all HNOSs. As the SADQ provides object information by preserving both the spatial closeness of objects to the query object and the neighboring relationship between objects, it is useful in many fields and application domains. A grid index is first designed to manage information of data objects and road networks, and then the SADQ algorithm is developed, which is combined with the grid index to efficiently process the SADQ. Extensive experiments using real road network datasets demonstrate the efficiency of the proposed SADQ algorithm.
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道路网络中异构相邻目标最短平均距离查询的高效评估
最近,研究界已经引入了各种方法来处理道路网络中单一类型对象的基于位置的查询。然而,在实际应用程序中,用户可能对获取不同类型对象的信息感兴趣,根据它们的相邻关系。不同类型对象之间距离较近的集合称为异构相邻对象集(HNOSs)。在本文中,我们提出了一种新的基于位置的查询类型——最短平均距离查询(SADQ)。给定查询对象q和距离d, SADQ检索一个HNOS,使得该集合中任意两个对象之间的道路距离小于或等于d,并且其到q的平均道路距离是所有HNOS中最短的。由于SADQ通过保留对象与查询对象的空间紧密性和对象之间的相邻关系来提供对象信息,因此它在许多领域和应用程序领域都很有用。首先设计网格索引对数据对象和路网信息进行管理,然后开发SADQ算法,将网格索引与SADQ算法相结合,有效地处理SADQ。使用真实路网数据集的大量实验证明了所提出的SADQ算法的有效性。
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