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Pruned Bi-directed K-nearest Neighbor Graph for Proximity Search

机译:修剪的双向K近邻图用于邻近搜索

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In this paper, we address the problems with fast proximity searches for high-dimensional data by using a graph as an index. Graph-based methods that use the k-nearest neighbor graph (KNNG) as an index perform better than tree-based and hash-based methods in terms of search precision and query time. To further improve the performance of the KNNG, the number of edges should be increased. However, increasing the number takes up more memory, while the rate of performance improvement gradually falls off. Here, we propose a pruned bi-directed KNNG (PBKNNG) in order to improve performance without increasing the number of edges. Different directed edges for existing edges between a pair of nodes are added to the KNNG, and excess edges are selectively pruned from each node. We show that the PBKNNG outperforms the KNNG for SIFT and GIST image descriptors. However, the drawback of the KNNG is that its construction cost is fatally expensive. As an alternative, we show that a graph can be derived from an approximate neighborhood graph, which costs much less to construct than a KNNG, in the same way as the PBKNNG and that it also outperforms a KNNG.
机译:在本文中,我们通过使用图形作为索引来解决快速接近搜索的问题。基于图形的方法,使用K-Collest Exband图(Knng)作为索引的索引在搜索精度和查询时间方面的基于树和基于哈希的方法更好。为了进一步提高Knng的性能,应增加边缘的数量。但是,增加数量占用更多内存,而性能提高速率逐渐脱落。在这里,我们提出了一种修剪的双向KNNG(PBKNNG),以便在不增加边缘数量的情况下提高性能。一对节点之间的现有边缘的不同定向边缘被添加到Knng,并且从每个节点选择性地修剪过多的边缘。我们表明pbknng优于筛选和主体图像描述符的knng。然而,KNG的缺点是其施工成本致命昂贵。作为替代方案,我们示出了图表可以从近似邻域图导出,这比构造的成本要少于knng,以与pbknng相同,并且它也优于knng。

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