Performance Enhancement of a DVA-tree by the Independent Vector Approximation

Hyun-Hwa Choi, Kyuchul Lee
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引用次数: 1

Abstract

Most of the distributed high-dimensional indexing structures provide a reasonable search performance especially when the dataset is uniformly distributed. However, in case when the dataset is clustered or skewed, the search performances gradually degrade as compared with the uniformly distributed dataset. We propose a method of improving the k-nearest neighbor search performance for the distributed vector approximation-tree based on the strongly clustered or skewed dataset. The basic idea is to compute volumes of the leaf nodes on the top-tree of a distributed vector approximation-tree and to assign different number of bits to them in order to assure an identification performance of vector approximation. In other words, it can be done by assigning more bits to the high-density clusters. We conducted experiments to compare the search performance with the distributed hybrid spill-tree and distributed vector approximation-tree by using the synthetic and real data sets. The experimental results show that our proposed scheme provides consistent results with significant performance improvements of the distributed vector approximation-tree for strongly clustered or skewed datasets.
通过独立矢量逼近提高 DVA 树的性能
大多数分布式高维索引结构都能提供合理的搜索性能,尤其是在数据集均匀分布的情况下。然而,如果数据集是聚类或倾斜的,搜索性能就会比均匀分布的数据集逐渐下降。我们提出了一种改善基于强聚类或倾斜数据集的分布式向量近似树的 k 近邻搜索性能的方法。其基本思想是计算分布式向量近似树顶树上叶节点的体积,并为其分配不同的比特数,以确保向量近似的识别性能。换句话说,可以为高密度簇分配更多比特。我们使用合成数据集和真实数据集进行了实验,比较了分布式混合溢出树和分布式矢量近似树的搜索性能。实验结果表明,对于强聚类或倾斜的数据集,我们提出的方案与分布式向量近似树的性能改善效果一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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