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Adaptive cost dynamic time warping distance in time series analysis for classification

机译:自适应成本动态时间翘曲距离分类分析分析

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Dynamic time warping (DTW) distance is commonly used in measuring similarity between time series for classification. In order to obtain the minimum cumulative distance, however, DTW distance may map multiple points on one time series to one point on another, and this makes time series over stretched and compressed, resulting in missing important feature information thus influence the classification accuracy. In this paper, we propose a method called adaptive cost dynamic time warping distance (AC-DTW), which adjusts the number of points on one time series mapped to the points on another. AC-DTW records the trajectories of all points and then adaptively allocates the cost rate to each point by calculating cost function at the next step. The results of the experiments implemented on 17 UCR datasets by using nearest neighbor classifier demonstrate that AC-DTW prevails in criterion of higher accuracy rate in comparison with some existing methods. (C) 2017 Elsevier B.V. All rights reserved.
机译:动态时间翘曲(DTW)距离通常用于测量时间序列之间的相似性进行分类。 然而,为了获得最小累积距离,DTW距离可以在一个时间序列上将多个点映射到另一个时间序列,并且这使得时间序列在拉伸和压缩中,导致缺失的重要特征信息,从而影响分类精度。 在本文中,我们提出了一种称为自适应成本动态动态时间翘曲距离(AC-DTW)的方法,该距离(AC-DTW)调整一个时间序列的点数映射到另一个时间序列。 AC-DTW记录所有点的轨迹,然后通过在下一步计算成本函数,自适应地将成本速率分配给每个点。 通过使用最近的邻分类器在17个UCR数据集上实现的实验结果表明AC-DTW与一些现有方法相比,AC-DTW在更高的精度率的标准中占上去。 (c)2017年Elsevier B.V.保留所有权利。

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