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Reverse k nearest neighbors queries and spatial reverse top-k queries

机译:反向k最近邻居查询和空间反向top k查询

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Given a set of facilities and a set of users, a reverse k nearest neighbors (RkNN) query q returns every user for which the query facility is one of the k closest facilities. Almost all of the existing techniques to answer RkNN queries adopt a pruning-and-verification framework. Regions-based pruning and half-space pruning are the two most notable pruning strategies. The half-space-based approach prunes a larger area and is generally believed to be superior. Influenced by this perception, almost all existing RkNN algorithms utilize and improve the half-space pruning strategy. We observe the weaknesses and strengths of both strategies and discover that the regions-based pruning has certain strengths that have not been exploited in the past. Motivated by this, we present a new regions-based pruning algorithm called Slice that utilizes the strength of regions-based pruning and overcomes its limitations. We also study spatial reverse top-k (SRTk) queries that return every user u for which the query facility is one of the top-k facilities according to a given linear scoring function. We first extend half-space-based pruning to answer SRTk queries. Then, we propose a novel regions-based pruning algorithm following Slice framework to solve the problem. Our extensive experimental study on synthetic and real data sets demonstrates that Slice is significantly more efficient than all existing RkNN and SRTk algorithms.
机译:给定一组功能和一组用户,反向k最近邻居(RkNN)查询q返回其查询功能是k个最接近功能之一的每个用户。回答RkNN查询的几乎所有现有技术都采用修剪和验证框架。基于区域的修剪和半空间修剪是两个最著名的修剪策略。基于半空间的方法会修剪较大的区域,通常被认为是更好的方法。受这种感觉的影响,几乎所有现有的RkNN算法都利用并改进了半空间修剪策略。我们观察了这两种策略的弱点和优势,发现基于区域的修剪具有过去未曾开发的某些优势。因此,我们提出了一种新的基于区域的修剪算法,称为Slice,该算法利用了基于区域的修剪的优势并克服了其局限性。我们还研究了空间反向top-k(SRTk)查询,该查询根据给定的线性评分函数返回每个用户u,其查询功能是top-k功能之一。我们首先扩展基于半空间的修剪,以回答SRTk查询。然后,根据Slice框架提出了一种新颖的基于区域的修剪算法。我们对综合和真实数据集进行的广泛实验研究表明,Slice比所有现有的RkNN和SRTk算法效率更高。

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