BitBooster:通过二进制操作有效逼近距离度量

Yorick Spenrath, Marwan Hassani, B. van Dongen
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引用次数: 1

摘要

欧几里得距离是最常用的距离度量之一。文献中提出了几种近似方法,以降低高维或大型数据集的度量复杂性。在本文中,我们提出了BitBooster,这是一种近似于欧几里得距离的方法,可以使用二进制操作有效地计算,也可以应用于曼哈顿距离。当BitBooster用于基于凸和基于密度的聚类时,所引入的近似误差可以忽略不计。虽然获得的聚类质量与精确计算获得的聚类质量几乎相同,但我们只需要一小部分计算时间。我们在960个不同大小、维度和集群的合成数据集和13个真实数据集上证明了我们的方法在替代逼近中的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BitBooster: Effective Approximation of Distance Metrics via Binary Operations
The Euclidean distance is one of the most commonly used distance metrics. Several approximations have been pro-posed in the literature to reduce the complexity of this metric for high-dimensional or large datasets. In this paper, we propose BitBooster, an approximation to the Euclidean distance that can be efficiently computed using binary operations and which can also be applied to the Manhattan distance. The introduced approximation error is shown to be negligible when BitBooster is used for both convex- and density-based clustering. While obtaining clusters of almost the same quality as those obtained with the exact computation, we require only a fraction of the computation time. We demonstrate the superiority of our method to alternative approximations on 960 synthetic and 13 real-world datasets of varying sizes, dimensions and clusters.
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