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An Effective Permutant Selection Heuristic for Proximity Searching in Metric Spaces

机译:度量空间中邻近搜索的有效置换选择启发式

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The permutation based index has shown to be very effective in medium and high dimensional metric spaces, even in difficult problems such as solving reverse κ-nearest neighbor queries. Nevertheless, currently there is no study about which are the desirable features one can ask to a permutant set, or how to select good permutants. Similar to the case of pivots, our experimental results show that, compared with a randomly chosen set, a good permutant set yields to fast query response or to reduce the amount of space used by the index. In this paper, we start by characterizing permutants and studying their predictive power; then we propose an effective heuristic to select a good set of permutant candidates. We also show empirical evidence that supports our technique.
机译:基于置换的索引已显示在中高维度度量空间中非常有效,即使在解决诸如反向κ最近邻查询之类的难题时也是如此。尽管如此,目前还没有关于哪些人可以向置换集询问哪些理想特征或如何选择良好置换的研究。与数据透视的情况类似,我们的实验结果表明,与随机选择的集合相比,良好的置换集合可产生快速的查询响应或减少索引使用的空间量。在本文中,我们从表征置换子并研究其预测能力入手。然后我们提出一种有效的启发式方法,以选择一组好的置换候选者。我们还显示了支持我们技术的经验证据。

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