用于高效反向最近邻查询的索引结构

Congjun Yang, King-Ip Lin
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引用次数: 186

摘要

反向最近邻(RNN)问题是在给定数据集中找到其最近邻是给定查询点的所有点。与最近邻(NN)查询一样,RNN查询也出现在许多实际情况中,如市场营销和资源管理。因此,需要有效的RNN数据库查询方法。本文介绍了一种新的索引结构Rdnn-tree,它可以有效地回答RNN和NN的查询。动态数据库采用单一索引结构,而不是在以前的工作中使用多个索引。这大大节省了动态维护索引结构的工作量。Rdnn-tree在很多方面都优于现有的方法。在合成数据和真实世界数据上的实验表明,我们的索引结构在RNN查询中显著优于以前的方法(就访问的叶节点数量而言超过90%)。它还显示了与标准技术相比,神经网络查询的改进。此外,在树的一次遍历中组合多个查询(NN和RNN)的能力大大提高了插入和删除的性能。这些事实使得我们的索引结构在静态和动态情况下都非常可取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An index structure for efficient reverse nearest neighbor queries
The Reverse Nearest Neighbor (RNN) problem is to find all points in a given data set whose nearest neighbor is a given query point. Just like the Nearest Neighbor (NN) queries, the RNN queries appear in many practical situations such as marketing and resource management. Thus, efficient methods for the RNN queries in databases are required. The paper introduces a new index structure, the Rdnn-tree, that answers both RNN and NN queries efficiently. A single index structure is employed for a dynamic database, in contrast to the use of multiple indexes in previous work. This leads to significant savings in dynamically maintaining the index structure. The Rdnn-tree outperforms existing methods in various aspects. Experiments on both synthetic and real world data show that our index structure outperforms previous methods by a significant margin (more than 90% in terms of number of leaf nodes accessed) in RNN queries. It also shows improvement in NN queries over standard techniques. Furthermore, performance in insertion and deletion is significantly enhanced by the ability to combine multiple queries (NN and RNN) in one traversal of the tree. These facts make our index structure extremely preferable in both static and dynamic cases.
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