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Ranked Reverse Boolean Spatial Keyword Nearest Neighbors Search

机译:排序反向布尔空间关键字最近邻搜索

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Recently, Reverse k Nearest Neighbors (RkNN) queries, returning every answer for which the query is one of its k nearest neighbors, have been extensively studied on the database research community. But the RkNN query cannot retrieve spatio-textual objects which are described by their spatial location and a set of keywords. Therefore, researchers proposed a RSTkNN query to find these objects, taking both spatial and textual similarity into consideration. However, the RSTkNN query cannot control the size of answer set and to be sorted according to the degree of influence on the query. In this paper, we propose a new problem Ranked Reverse Boolean Spatial Keyword Nearest Neighbors query called Ranked-RBSKNN query, which considers both spatial similarity and textual relevance, and returns t answers with most degree of influence. We propose a separate index and a hybrid index to process such queries efficiently. Experimental results on different real-world and synthetic datasets show that our approaches achieve better performance.
机译:最近,反向k最近邻查询(RkNN)查询返回了该查询是其k个最近邻之一的每个答案,已在数据库研究社区中进行了广泛研究。但是RkNN查询无法检索由其空间位置和一组关键字描述的时空文本对象。因此,研究人员提出了RSTkNN查询来找到这些对象,同时考虑了空间和文本的相似性。但是,RSTkNN查询无法控制答案集的大小,并且无法根据对查询的影响程度对其进行排序。在本文中,我们提出了一个新的问题,即排序逆布尔空间关键字最近邻查询,称为Rank-RBSKNN查询,该查询同时考虑了空间相似性和文本相关性,并返回影响程度最大的t个答案。我们提出了一个单独的索引和一个混合索引来有效地处理此类查询。在不同的现实世界和合成数据集上的实验结果表明,我们的方法具有更好的性能。

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