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Application of State-Space Modeling to instantaneous independent-component analysis

机译:状态空间建模在瞬时独立分量分析中的应用

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In this paper, we design an algorithm for decomposing multivariate electroencephalographic (EEG) time series into independent components, based on Independent-Component Analysis (ICA) and State-Space Modeling (SSM). We aim at combining the strong aspects of both methods: ICA provides an initial model for SSM which is then further optimized by maximum-likelihood. We also propose an approach for augmentation of the state space by extracting additional components from the data prediction errors. The estimate of the mixing matrix provided by ICA is excluded from optimization. Practical application of the proposed algorithm is demonstrated by an example of the analysis of EEG data recorded from an epilepsy patient.
机译:在本文中,我们基于独立成分分析(ICA)和状态空间建模(SSM)设计了一种将多元脑电图(EEG)时间序列分解为独立成分的算法。我们的目标是结合这两种方法的强项:ICA为SSM提供了一个初始模型,然后通过最大可能性进一步优化。我们还提出了一种通过从数据预测误差中提取其他分量来增强状态空间的方法。由ICA提供的混合矩阵的估计不包括在优化中。通过对癫痫患者记录的脑电数据进行分析的示例,证明了该算法的实际应用。

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