使用MaxNearestDist估计器寻找深度优先的k近邻

H. Samet
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引用次数: 17

摘要

在涉及挖掘不同类型数据(如图像、视频、时间序列、文本文档、DNA序列等)的应用程序中,相似性搜索是寻找模式的重要任务。相似性搜索通常简化为查找查询对象的k个最近邻。描述了在深度优先分支定界k近邻搜索算法中,如何利用可找到最近邻的最大可能距离的估计来简化搜索过程。在深度优先k近邻算法中使用MaxNearestDist估计器(Larsen, S.和Kanal, l.n., 1986)提供了纯深度优先和最佳优先k近邻算法之间的中间地带。
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Depth-first k-nearest neighbor finding using the MaxNearestDist estimator
Similarity searching is an important task when trying to find patterns in applications which involve mining different types of data such as images, video, time series, text documents, DNA sequences, etc. Similarity searching often reduces to finding the k nearest neighbors to a query object. A description is given of how to use an estimate of the maximum possible distance at which a nearest neighbor can be found to prune the search process in a depth-first branch-and-bound k-nearest neighbor finding algorithm. Using the MaxNearestDist estimator (Larsen, S. and Kanal, L.N., 1986) in the depth-first k-nearest neighbor algorithm provides a middle ground between a pure depth-first and a best-first k-nearest neighbor algorithm.
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