将非空间偏好集成到空间位置查询中

Qiang Qu, Siyuan Liu, B. Yang, Christian S. Jensen
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引用次数: 26

摘要

越来越多的地理参考数据可供使用。这些数据包括所谓的兴趣点,通过地理位置和文本描述或评级等属性来描述企业、旅游景点等。我们提出并研究了一种新的兴趣点查询的有效实现,该查询同时考虑了兴趣点的位置和属性。查询将结果基数、空间范围和与属性相关的首选项作为参数,并返回具有给定基数且在满足首选项的给定范围内的一组紧凑的兴趣点。具体来说,结果集中的兴趣点涵盖了所谓的结盟偏好,并且远离拥有所谓疏远偏好的兴趣点。统一的结果评级函数将两种偏好与空间距离相结合,实现这一功能。我们为这类查询提供了高效精确的算法。为了支持对大型数据集的查询,我们还提供了一种近似算法,该算法利用最近邻属性来实现可扩展的性能。我们开发并应用支持搜索空间修剪的下界和上界,从而提高性能。最后,我们提供了上述查询的泛化,并扩展了算法来支持泛化。我们报告了使用谷歌商业场所的真实兴趣点数据对所提议算法的实验评估,该数据提供了对所提议解决方案性能的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating non-spatial preferences into spatial location queries
Increasing volumes of geo-referenced data are becoming available. This data includes so-called points of interest that describe businesses, tourist attractions, etc. by means of a geo-location and properties such as a textual description or ratings. We propose and study the efficient implementation of a new kind of query on points of interest that takes into account both the locations and properties of the points of interest. The query takes a result cardinality, a spatial range, and property-related preferences as parameters, and it returns a compact set of points of interest with the given cardinality and in the given range that satisfies the preferences. Specifically, the points of interest in the result set cover so-called allying preferences and are located far from points of interest that possess so-called alienating preferences. A unified result rating function integrates the two kinds of preferences with spatial distance to achieve this functionality. We provide efficient exact algorithms for this kind of query. To enable queries on large datasets, we also provide an approximate algorithm that utilizes a nearest-neighbor property to achieve scalable performance. We develop and apply lower and upper bounds that enable search-space pruning and thus improve performance. Finally, we provide a generalization of the above query and also extend the algorithms to support the generalization. We report on an experimental evaluation of the proposed algorithms using real point of interest data from Google Places for Business that offers insight into the performance of the proposed solutions.
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