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A improved common principal components based dimension reduction method for multivariate time series analysis

机译:一种改进的基于通用主成分的降维方法用于多元时间序列分析

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Existing traditional dimension reduction methods for multivariate time series have limitations for principal feature preservation, and have impact on the quality of data mining. Therefore, from the perspective of shape features of data, a novel dimension reduction method of multivariate time series based on improved common principal components was proposed. In training datasets, centers for multi-time series of each category were obtained through the improved DTW Barycenter Averaging method. And then the common principal component analysis of the central time series in each category is carried out. In this way, the dimension of multi-time series can be reduced. The comparative experimental results show that the proposed method can reduce dimension effectively and achieve a good classification effect.
机译:现有的用于多元时间序列的传统降维方法在保留主要特征方面存在局限性,并会影响数据挖掘的质量。因此,从数据的形状特征角度出发,提出了一种基于改进的主成分的多元时间序列降维方法。在训练数据集中,通过改进的DTW重心平均方法获得了每个类别的多个时间序列的中心。然后对每个类别的中心时间序列进行通用主成分分析。这样,可以减小多次序列的维数。对比实验结果表明,该方法可以有效地减小维数,达到较好的分类效果。

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