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SLICE: Reviving regions-based pruning for reverse k nearest neighbors queries

机译:切片:恢复基于地区的修剪,用于反向K最近邻居查询

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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. Due to its importance, RkNN query has received significant research attention in the past few years. Almost all of the existing techniques 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 RkNN algorithm called SLICE that utilizes the strength of regions-based pruning and overcomes its limitations. Our extensive experimental study on synthetic and real data sets demonstrate that SLICE is significantly more efficient than the existing algorithms. We also provide a detailed theoretical analysis to analyze various aspects of our algorithm such as I/O cost, the unpruned area, and the cost of its verification phase etc. The experimental study validates our theoretical analysis.
机译:鉴于一组设施和一组用户,反向K最近邻居(RKNN)查询Q返回一个Query工具是K-Closent设施之一的每个用户。由于其重要性,RKNN查询在过去几年中得到了显着的研究。几乎所有现有技术都采用了修剪和验证框架。基于地区的修剪和半空间修剪是两个最显着的修剪策略。基于半空间的方法是较大的区域,通常被认为是优越的。受到这种感知的影响,几乎所有现有的RKNN算法利用和改善了半空间修剪策略。我们遵守两种策略的弱点和优势,并发现基于地区的修剪具有过去未被利用的某些优势。由此激励,我们提出了一种称为切片的新RKNN算法,其利用基于区域的修剪强度并克服其限制。我们对合成和实数据集的广泛实验研究表明,切片比现有算法明显更有效。我们还提供了一个详细的理论分析,分析了我们算法的各个方面,例如I / O成本,未提高的地区和验证阶段的成本等。实验研究验证了我们的理论分析。

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