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A shape-based similarity measure for time series data with ensemble learning

机译:集成学习的时间序列数据基于形状的相似性度量

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This paper introduces a shape-based similarity measure, called the angular metric for shape similarity (AMSS), for time series data. Unlike most similarity or dissimilarity measures, AMSS is based not on individual data points of a time series but on vectors equivalently representing it. AMSS treats a time series as a vector sequence to focus on the shape of the data and compares data shapes by employing a variant of cosine similarity. AMSS is, by design, expected to be robust to time and amplitude shifting and scaling, but sensitive to short-term oscillations. To deal with the potential drawback, ensemble learning is adopted, which integrates data smoothing when AMSS is used for classification. Evaluative experiments reveal distinct properties of AMSS and its effectiveness when applied in the ensemble framework as compared to existing measures.
机译:本文针对时间序列数据介绍了一种基于形状的相似性度量,称为形状相似性角度度量(AMSS)。与大多数相似性或不相似性度量不同,AMSS不是基于时间序列的单个数据点,而是基于等效表示它的向量。 AMSS将时间序列视为向量序列,以专注于数据的形状,并通过使用余弦相似度的变体来比较数据形状。通过设计,AMSS有望对时间和幅度平移和缩放具有鲁棒性,但对短期振荡敏感。为了解决潜在的缺点,采用了集成学习,集成学习使用AMSS进行分类时的数据平滑。评估实验显示,与现有度量相比,将AMSS应用于集合框架时具有明显的特性及其有效性。

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