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An efficient method for time series similarity search using binary code representation and hamming distance

机译:使用二进制代码表示和汉明距离的时间序列相似性搜索的有效方法

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Time series similarity search is an essential operation in time series data mining and has received much higher interest along with the growing popularity of time series data. Although many algorithms to solve this problem have been investigated, there is a challenging demand for supporting similarity search in a fast and accurate way. In this paper, we present a novel approach, TS2BC, to perform time series similarity search efficiently and effectively. TS2BC uses binary code to represent time series and measures the similarity under the Hamming Distance. Our method is able to represent original data compactly and can handle shifted time series and work with time series of different lengths. Moreover, it can be performed with reasonably low complexity due to the efficiency of calculating the Hamming Distance. We extensively compare TS2BC with state-of-the-art algorithms in classification framework using 61 online datasets. Experimental results show that TS2BC achieves better or comparative performance than other the state-of-the-art in accuracy and is much faster than most existing algorithms. Furthermore, we propose an approximate version of TS2BC to speed up the query procedure and test its efficiency by experiment.
机译:时间序列相似性搜索是时间序列数据挖掘的基本操作,并且随着时间序列数据的日益普及的普及,获得了更高的兴趣。虽然已经调查了解决这个问题的许多算法,但是以快速准确的方式支持相似性搜索的需求具有挑战性的需求。在本文中,我们提出了一种新的方法TS2BC,以有效且有效地执行时间序列相似度搜索。 TS2BC使用二进制代码来表示时间序列并测量汉明距离下的相似性。我们的方法能够紧凑地代表原始数据,可以处理移位的时间序列,并使用不同长度的时间序列。此外,由于计算汉明距离的效率,可以具有合理低的复杂性。我们使用61在线数据集在分类框架中广泛比较TS2BC与最先进的算法。实验结果表明,TS2BC的比较表现比其他最先进的准确性更好,而且比大多数现有算法快得多。此外,我们提出了一个近似版本的TS2BC,以加快查询程序并通过实验测试其效率。

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