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Querying high-dimensional data in single-dimensional space

机译:查询一维空间中的高维数据

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In this paper, we propose a new tunable index scheme, called iMinMax(θ), that maps points in high-dimensional spaces to single-dimensional values determined by their maximum or minimum values among all dimensions. By varying the tuning knob, θ, we can obtain different families of iMinMax structures that are optimized for different distributions of data sets. The transformed data can then be indexed using existing single-dimensional indexing structures such as the B ~+-trees. Queries in the high-dimensional space have to be transformed into queries in the single-dimensional space and evaluated there. We present efficient algorithms for evaluating window queries as range queries on the single-dimensional space. We conducted an extensive performance study to evaluate the effectiveness of the proposed schemes. Our results show that iMinMax(θ) outperforms existing techniques, including the Pyramid scheme and VA-file, by a wide margin. We then describe how iMinMax could be used in approximate K-nearest neighbor (KNN) search, and we present a comparative study against the recently proposed iDistance, a specialized KNN indexing method.
机译:在本文中,我们提出了一种新的可调索引方案,称为iMinMax(θ),该方案将高维空间中的点映射到由其在所有维中的最大值或最小值所确定的一维值。通过改变调节旋钮θ,我们可以获得针对数据集的不同分布进行了优化的不同系列的iMinMax结构。然后可以使用现有的一维索引结构(例如B〜+树)对转换后的数据进行索引。高维空间中的查询必须转换为一维空间中的查询并在那里进行评估。我们提出了一种有效的算法,用于将窗口查询评估为一维空间上的范围查询。我们进行了广泛的性能研究,以评估所提议方案的有效性。我们的结果表明,iMinMax(θ)大大优于现有技术,包括金字塔方案和VA文件。然后,我们描述如何将iMinMax用于近似K近邻(KNN)搜索,并且我们针对最近提出的iDistance(一种专门的KNN索引方法)进行了比较研究。

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