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Improving the the permutation-based proximity searching algorithm using zones and partial information

机译:利用区域和局部信息改进基于置换的邻近搜索算法

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摘要

Similarity searching is a very useful task in several disciplines such as pattern recognition, machine learning, and decision theory. To solve this task we can use an index to speed up the searching. Among the current indices, the permutant based searching approach has proved its efficiency for high-dimensional data before, however up to now this approach had not been adapted to work with low-dimensional data where the approach seemed useless. We propose several ways to adapt the permutant searching approach for low-dimensional data, using zones varying the distribution of the radii, trying different distance measures, and using partial distance computation as well. After many experiments, we arrived to conclusions about the optimal values of the parameters using a synthetic database of vectors, and then use these learned values on real databases obtaining excellent results for k-nearest neighbor queries, both in high and low dimensional data. (C) 2017 Elsevier B.V. All rights reserved.
机译:在某些领域,例如模式识别,机器学习和决策理论,相似性搜索是一项非常有用的任务。为了解决此任务,我们可以使用索引来加快搜索速度。在当前索引中,基于置换的搜索方法之前已经证明了其对高维数据的有效性,但是直到现在,该方法仍未适应于低维数据的使用,而该方法似乎毫无用处。我们提出了几种方法来适应低维数据的置换搜索方法,方法是使用改变半径分布的区域,尝试不同的距离度量以及使用部分距离计算。经过多次实验,我们使用向量的综合数据库得出了关于参数最佳值的结论,然后将这些学习值用于真实数据库,从而在高维和低维数据中获得了k最近邻查询的出色结果。 (C)2017 Elsevier B.V.保留所有权利。

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