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Comparative Analysis of Data Structures for Approximate Nearest Neighbor Search

机译:近似邻邻搜索数据结构的比较分析

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Similarity searching has a vast range of applications in various fields of computer science. Many methods have been proposed for exact search, but they all suffer from the curse of dimensionality and are, thus, not applicable to high dimensional spaces. Approximate search methods are considerably more efficient in high dimensional spaces. Unfortunately, there are few theoretical results regarding the complexity of these methods and there are no comprehensive empirical evaluations, especially for non-metric spaces. To fill this gap, we present an empirical analysis of data structures for approximate nearest neighbor search in high dimensional spaces. We provide a comparison with recently published algorithms on several data sets. Our results show that small world approaches provide some of the best tradeoffs between efficiency and effectiveness in both metric and non-metric spaces.
机译:相似性搜索在计算机科学的各个领域具有广泛的应用。 已经提出了许多方法来精确搜索,但它们都遭受了维度的诅咒,因此不适用于高尺寸空间。 近似搜索方法在高维空间中具有相当高的效率。 不幸的是,关于这些方法的复杂性的理论结果很少,并且没有全面的经验评估,特别是对于非公制空间。 为了填补这种差距,我们对高维空间中的近似邻近搜索的数据结构的实证分析。 我们提供了与几种数据集上最近发表的算法进行了比较。 我们的研究结果表明,小世界方法提供了一部分,在公制和非公制空间中的效率和有效性之间提供了一些最佳权衡。

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