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Inverted Linear Quadtree: Efficient Top K Spatial Keyword Search

机译:反向线性四叉树:有效的前K个空间关键字搜索

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With advances in geo-positioning technologies and geo-location services, there are a rapidly growing amount of spatio-textual objects collected in many applications such as location based services and social networks, in which an object is described by its spatial location and a set of keywords (terms). Consequently, the study of spatial keyword search which explores both location and textual description of the objects has attracted great attention from the commercial organizations and research communities. In the paper, we study two fundamental problems in the spatial keyword queries: top spatial keyword search (TOPK-SK), and batch top spatial keyword search (BTOPK-SK). Given a set of spatio-textual objects, a query location and a set of query keywords, the TOPK-SK retrieves the closest objects each of which contains all keywords in the query. BTOPK-SK is the batch processing of sets of TOPK-SK queries. Based on the inverted index and the linear quadtree, we propose a novel index structure, called inverted linear quadtree (IL-Quadtree), which is carefully designed to exploit both spatial and keyword based pruning techniques to effectively reduce the search space. An efficient algorithm is then developed to tackle top spatial keyword sea- ch. To further enhance the filtering capability of the signature of linear quadtree, we propose a partition based method. In addition, to deal with BTOPK-SK, we design a new computing paradigm which partition the queries into groups based on both spatial proximity and the textual relevance between queries. We show that the IL-Quadtree technique can also efficiently support BTOPK-SK. Comprehensive experiments on real and synthetic data clearly demonstrate the efficiency of our methods.
机译:随着地理定位技术和地理位置服务的进步,在许多应用程序(例如基于位置的服务和社交网络)中收集的时空文本对象数量迅速增长,其中,对象是通过其空间位置和集合来描述的关键字(字词)。因此,探索关键词的位置和文字描述的空间关键词搜索研究引起了商业组织和研究团体的极大关注。在本文中,我们研究了空间关键字查询中的两个基本问题:顶部空间关键字搜索(TOPK-SK)和批处理顶部空间关键字搜索(BTOPK-SK)。给定一组时空文本对象,一个查询位置和一组查询关键字,TOPK-SK检索最接近的对象,每个对象都包含查询中的所有关键字。 BTOPK-SK是TOPK-SK查询集的批处理。基于倒排索引和线性四叉树,我们提出了一种新颖的索引结构,称为倒置线性四叉树(IL-Quadtree),该结构经过精心设计,可以利用基于空间和关键字的修剪技术来有效地减少搜索空间。然后,开发了一种有效的算法来解决顶级空间关键字搜索。为了进一步增强线性四叉树签名的过滤能力,我们提出了一种基于分区的方法。另外,为了处理BTOPK-SK,我们设计了一种新的计算范例,该范例基于空间接近度和查询之间的文本相关性将查询分为几组。我们证明,IL-Quadtree技术还可以有效地支持BTOPK-SK。对真实和综合数据进行的全面实验清楚地证明了我们方法的有效性。

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