Novel Exact and Approximate Algorithms for the Closest Pair Problem

S. Rajasekaran, Subrata Saha, Xingyu Cai
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引用次数: 2

Abstract

The closest pair problem (CPP) is an important problem that has numerous applications in clustering, graph partitioning, image processing, patterns identification, intrusion detection, etc. Numerous algorithms have been presented for solving the CPP. For instance, on n points there exists an O(n log n) time algorithm for CPP (when the dimension is a constant). There also exist randomized algorithms with an expected linear run time. However these algorithms do not perform well in practice. The algorithms that are employed in practice have a worst case quadratic run time. One of the best performing algorithms for the CPP is MK (originally designed for solving the time series motif finding problem). In this paper we present an elegant exact algorithm called MPR for the CPP that performs better than MK. Also, we present approximation algorithms for the CPP that are faster than MK by up to a factor of more than 40, while maintaining a very good accuracy.
最近对问题的新的精确和近似算法
最接近对问题(CPP)是一个重要的问题,在聚类、图划分、图像处理、模式识别、入侵检测等领域有着广泛的应用。已经提出了许多求解CPP的算法。例如,在n个点上存在一个O(n log n)时间的CPP算法(当维度为常数时)。也存在具有预期线性运行时间的随机算法。然而,这些算法在实际应用中表现不佳。在实践中使用的算法具有最坏情况的二次运行时间。其中表现最好的CPP算法是MK(最初设计用于解决时间序列基序寻找问题)。在本文中,我们提出了一种优雅的精确算法,称为MPR,用于CPP,其性能优于MK。此外,我们还提出了CPP的近似算法,该算法比MK快40倍以上,同时保持了非常好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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