Processing Approximate KNN Query Based on Data Source Selection

Liang Zhu, Peng Li, Yonggang Wei, Xin Song, Yu Wang
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Abstract

A KNN query over a relation is to find its $K$ nearest neighbors/tuples from a dataset/relation according to a distance function. In this paper, we discuss approximate KNN query processing based on the selection of many data sources with various dimensions. We propose algorithms to construct a UBR- Tree and a Centroid Base for selecting related data sources and retrieving $K$ NN tuples. For a $K$ NN query $Q$, (1) the related data sources are selected by using the Centroid Base, (2) these data sources are sorted according to their representative tuple in the Centroid Base, (3) local $K$ NN tuples in the related data sources are retrieved, and (4) a heap structure is used to merge the local $K$ NN tuples to form global $K$ NN tuples of $Q$. Extensive experiments over low-dimensional and high-dimensional datasets are conducted to demonstrate the performances of our proposed approaches.
基于数据源选择的近似KNN查询处理
对一个关系的KNN查询是根据距离函数从一个数据集/关系中找到它的$K$近邻/元组。在本文中,我们讨论了基于选择多个不同维度的数据源的近似KNN查询处理。我们提出了构建UBR- Tree和质心库的算法,用于选择相关数据源和检索$K$ NN元组。对于$K$ NN查询$Q$,(1)使用质心库选择相关数据源,(2)根据质心库中的代表性元组对这些数据源进行排序,(3)检索相关数据源中的局部$K$ NN元组,(4)使用堆结构将局部$K$ NN元组合并形成$Q$的全局$K$ NN元组。在低维和高维数据集上进行了广泛的实验,以证明我们提出的方法的性能。
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