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On the Number of Signals in Multivariate Time Series

机译:多元时间序列中的信号数

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We assume a second-order source separation model where the observed multivariate time series is a linear mixture of latent, temporally uncorrelated time series with some components pure white noise. To avoid the modelling of noise, we extract the non-noise latent components using some standard method, allowing the modelling of the extracted univariate time series individually. An important question is the determination of which of the latent components are of interest in modelling and which can be considered as noise. Bootstrap-based methods have recently been used in determining the latent dimension in various methods of unsupervised and supervised dimension reduction and we propose a set of similar estimation strategies for second-order stationary time series. Simulation studies and a sound wave example are used to show the method's effectiveness.
机译:我们假设一个二阶源分离模型,其中观察到的多元时间序列是潜在的,时间上不相关的时间序列与某些成分的纯白噪声的线性混合。为了避免对噪声建模,我们使用一些标准方法来提取非噪声潜在分量,从而可以分别对提取的单变量时间序列进行建模。一个重要的问题是确定哪些潜在成分在建模中令人关注,哪些可以被视为噪声。最近,基于Bootstrap的方法已用于确定无监督和有监督的维降的各种方法中的潜在维数,我们针对二阶平稳时间序列提出了一套相似的估计策略。仿真研究和声波示例用于证明该方法的有效性。

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