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Randomized Partition Trees for Nearest Neighbor Search

机译:最近邻居搜索的随机分区树

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摘要

The -d tree was one of the first spatial data structures proposed for nearest neighbor search. Its efficacy is diminished in high-dimensional spaces, but several variants, with randomization and overlapping cells, have proved to be successful in practice. We analyze three such schemes. We show that the probability that they fail to find the nearest neighbor, for any data set and any query point, is directly related to a simple potential function that captures the difficulty of the point configuration. We then bound this potential function in several situations of interest: when the data are drawn from a doubling measure; when the data and query distributions are identical and are supported on a set of bounded doubling dimension; and when the data are documents from a topic model.
机译:-d树是为最近邻居搜索建议的首批空间数据结构之一。在高维空间中,它的功效减弱了,但是实践证明,具有随机化和重叠细胞的几种变体是成功的。我们分析了三种这样的方案。我们表明,对于任何数据集和任何查询点,他们未能找到最接近的邻居的概率与捕获点配置困难的简单势函数直接相关。然后,我们将这种潜在功能限制在几种感兴趣的情况下:从倍增测度中提取数据时;当数据和查询分布相同并且在一组有界加倍维上受支持时;以及数据是主题模型的文档时。

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