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Multilinear function factorisation for time series feature extraction

机译:用于时间序列特征提取的多线性函数分解

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This work applies a variety of multilinear function factorisation techniques to extract appropriate features or attributes from high dimensional multivariate time series for classification. Recently, a great deal of work has centred around designing time series classifiers using more and more complex feature extraction and machine learning schemes. This paper argues that complex learners and domain specific feature extraction schemes of this type are not necessarily needed for time series classification, as excellent classification results can be obtained by simply applying a number of existing matrix factorisation or linear projection techniques, which are simple and computationally inexpensive. We highlight this using a geometric separability measure and classification accuracies obtained though experiments on four different high dimensional multivariate time series datasets.
机译:这项工作应用了多种多线性函数分解技术,以从高维多元时间序列中提取适当的特征或属性,以进行分类。最近,大量工作集中在使用越来越复杂的特征提取和机器学习方案设计时间序列分类器上。本文认为,时间序列分类不一定需要这种类型的复杂学习器和特定于领域的特征提取方案,因为只需简单地应用大量现有的矩阵分解或线性投影技术即可获得出色的分类结果,这些方法既简单又计算价格便宜。我们通过对四个不同的高维多元时间序列数据集进行实验获得的几何可分离性度量和分类精度,突出显示了这一点。

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