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Similarity measure based on piecewise linear approximation and derivative dynamic time warping for time series mining

机译:基于分段线性逼近和导数动态时间规整的时间序列挖掘相似度度量

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摘要

We propose a new method to calculate the similarity of time series based on piecewise linear approximation (PLA) and derivative dynamic time warping (DDTW). The proposed method includes two phases. One is the divisive approach of piecewise linear approximation based on the middle curve of original time series. Apart from the attractive results, it can create line segments to approximate time series faster than conventional linear approximation. Meanwhile, high dimensional space can be reduced into a lower one and the line segments approximating the time series are used to calculate the similarity. In the other phase, we utilize the main idea of DDTW to provide another similarity measure based on the line segments just we got from the first phase. We empirically compare our new approach to other techniques and demonstrate its superiority.
机译:我们提出了一种基于分段线性逼近(PLA)和导数动态时间规整(DDTW)的时间序列相似度计算方法。所提出的方法包括两个阶段。一种是基于原始时间序列的中间曲线的分段线性逼近的除法。除了具有吸引力的结果外,它还可以创建线段以比传统的线性近似更快地近似时间序列。同时,可以将高维空间缩小为较低的空间,并使用近似时间序列的线段来计算相似度。在第二阶段,我们利用DDTW的主要思想,基于从第一阶段获得的线段,提供了另一种相似性度量。我们根据经验将我们的新方法与其他技术进行比较,并证明其优越性。

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