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Effectiveness of NAQ-tree in handling reverse nearest-neighbor queries in high-dimensional metric space

机译:NAQ树在高维度量空间中处理反向最近邻居查询的有效性

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摘要

Reverse nearest-neighbor (RNN) query processing is important for many applications such as decision-support systems, profile-based marketing and molecular biology; consequently, RNN query processing has attracted considerable attention in the research community in recent years. Most existing approaches for RNN query processing either rely on nearest-neighbor pre-computation or work for specific data space (e.g., the Euclidean space). The only method for RNN query processing in metric space is based on the M-tree. In this paper, we propose an approach for RNN query processing in high-dimensional metric space using distance-based index structure (in particular, NAQ-tree that outperforms the other distance-based index structures as we have already verified in a previous study). In high-dimensional space, the properties of distance-based index structure provide strong pruning rules than the M-tree. In addition, unlike the previous work, our approach integrates the filtering and verification steps and uses the information obtained in the verification stage to further improve the filtering rate. Our approach delivers results incrementally and hence well serves real-time applications. The reported experimental results demonstrate the applicability and effectiveness of the proposed NAQ-tree-based RNN approach.
机译:反向最近邻(RNN)查询处理对于许多应用程序(例如决策支持系统,基于配置文件的营销和分子生物学)很重要。因此,近年来,RNN查询处理在研究界引起了相当大的关注。用于RNN查询处理的大多数现有方法要么依赖于最近邻居的预计算,要么适用于特定的数据空间(例如,欧几里得空间)。度量空间中RNN查询处理的唯一方法是基于M树。在本文中,我们提出了一种基于距离的索引结构(特别是NAQ树,其性能优于其他基于距离的索引结构的NAQ树,正如我们在先前的研究中已经验证的那样),用于在高维度量空间中进行RNN查询处理。 。在高维空间中,基于距离的索引结构的属性提供了比M树强的修剪规则。此外,与以前的工作不同,我们的方法集成了过滤和验证步骤,并使用在验证阶段获得的信息来进一步提高过滤率。我们的方法逐步提供结果,因此很好地服务于实时应用程序。报告的实验结果证明了所提出的基于NAQ树的RNN方法的适用性和有效性。

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