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Clustering of interval-valued time series of unequal length based on improved dynamic time warping

机译:基于改进动态时间翘曲的间隔温度时间序列的聚类

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Clustering of a group of interval-valued time series of unequal length is often encountered and the key point of this clustering is the distance measure between two interval-valued time series. However, most distance measure methods apply to interval-valued time series of equal length, and another methods applicable to unequal-length ones usually show high computational cost. In order to give a reasonable and efficient distance measure, this paper first proposes a new representation in the form of a sequence of 3-tuples for interval-valued time series. In this representation, fully take into account the time-axis and value-axis information to decrease the loss of information. Meanwhile, this representation is guaranteed to achieve dimensionality reduction. Based on the new representation, dynamic time warping algorithm is then employed and an improved dynamic time warping algorithm is produced. Furthermore, a hierarchical clustering algorithm based on the new proposed distance measure is designed for interval-valued time series of equal or unequal length. Experimental results show the effectiveness of the proposed distance and quantify the performance of the designed clustering method. (C) 2019 Published by Elsevier Ltd.
机译:通常遇到一组间隔长度的间隔长度的聚类,并且该聚类的关键点是两个间隔值时间序列之间的距离测量。然而,大多数距离测量方法适用于相等长度的间隔值时间序列,并且其他适用于不等长度的方法通常会显示出高计算成本。为了提供合理且有效的距离测量,本文首先提出了一种以间隔值时间序列的3元序列的形式提出了新的表示。在此表示中,充分考虑了时轴和值轴信息以减少信息丢失。同时,保证这一表示旨在实现维度减少。基于新的表示,然后采用动态时间翘曲算法,并产生改进的动态时间翘曲算法。此外,基于新的建议距离测量的分层聚类算法被设计用于间隔值的相等或不等长度的间隔时间序列。实验结果表明,所提出的距离的有效性,量化设计聚类方法的性能。 (c)2019年由elestvier有限公司发布

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