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Temporal data analytics based on eigenmotif and shape space representations of time series

机译:基于特征序列和时间序列的形状空间表示的时间数据分析

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For temporal data analytics it is essential to assess the similarity of time series numerically. For similarity measures, in turn, appropriate time series representation techniques are needed. We present and discuss two techniques for time series representation. Eigenspace representations are based on a principal component analysis of time series. Shape space representations are based on polynomial least-squares approximations. Both aim at capturing the essential characteristics of time series while abstracting from less significant information, e.g., noise. The similarity of time series can then be measured using a standard Euclidean distance in the eigenspace or the shape space, respectively. Experiments on a number of benchmark data sets for time series classification show that the measure based on a shape space representation outperforms some other linear (non-elastic) similarity measures—including a standard Euclidean measure applied to the raw time series, which is a standard approach in temporal data analytics—regarding classification accuracy and run-time.
机译:对于时态数据分析,必须通过数字评估时间序列的相似性。反过来,对于相似性度量,需要适当的时间序列表示技术。我们提出并讨论了两种用于时间序列表示的技术。本征空间表示基于时间序列的主成分分析。形状空间表示基于多项式最小二乘近似。两者都旨在捕获时间序列的基本特征,同时从不太重要的信息(例如噪声)中抽象出来。然后可以分别使用特征空间或形状空间中的标准欧几里得距离来测量时间序列的相似性。对用于时间序列分类的多个基准数据集进行的实验表明,基于形状空间表示的度量要优于其他线性(非弹性)相似性度量,包括应用于原始时间序列的标准欧几里得度量,该度量是标准时间数据分析中的方法—关于分类的准确性和运行时间。

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