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首页> 外文期刊>Journal of Chemometrics >Wavelet-based self-organizing maps for classifying multivariate time series
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Wavelet-based self-organizing maps for classifying multivariate time series

机译:基于小波的自组织图,用于对多元时间序列进行分类

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摘要

Following a nonparametric approach, we suggest a time-series clustering method. Our clustering approach combines the benefits connected to the interpretative power of the nonparametric representation of the time series, and the clustering and vector quantization informational gain produced by the adopted unsupervised neural networks technique, enhanced with the self-organizing maps ordering and topological preservation abilities. The proposed clustering method takes into account a composite wavelet-based information of the multivariate time series by adding to the information connected to the wavelet variance, namely the influence of variability of individual univariate components of themultivariate time series across scales, the information associated to wavelet correlation, represented by the interaction between pairs of univariate components of the multivariate time series at each scale, and then suitably tuning the combination of these pieces of information. In order to assess the effectiveness of the proposed clustering approach, a simulation study and an empirical application are shown.
机译:遵循非参数方法,我们建议使用时间序列聚类方法。我们的聚类方法结合了与时间序列非参数表示的解释能力相关的优势,以及采用的无监督神经网络技术所产生的聚类和矢量量化信息增益,并增强了自组织图的排序和拓扑保存能力。所提出的聚类方法通过将与小波方差有关的信息添加到与小波方差有关的信息中,从而考虑到了基于多元小波的复合信息,即多元时间序列中各个单变量分量的可变性跨尺度的影响,与小波相关的信息关联性,由每个时间尺度上多元时间序列的单变量分量对之间的相互作用表示,然后适当地调整这些信息的组合。为了评估所提出的聚类方法的有效性,显示了仿真研究和经验应用。

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