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重复时间序列的进化因子分析

Evolutionary factor analysis of replicated time series.

作者信息

Motta Giovanni, Ombao Hernando

机构信息

Department of Quantitative Economics, Maastricht University P.O.Box 616, 6200 MD Maastricht, The Netherlands.

出版信息

Biometrics. 2012 Sep;68(3):825-36. doi: 10.1111/j.1541-0420.2012.01744.x. Epub 2012 Feb 24.

Abstract

In this article, we develop a novel method that explains the dynamic structure of multi-channel electroencephalograms (EEGs) recorded from several trials in a motor-visual task experiment. Preliminary analyses of our data suggest two statistical challenges. First, the variance at each channel and cross-covariance between each pair of channels evolve over time. Moreover, the cross-covariance profiles display a common structure across all pairs, and these features consistently appear across all trials. In the light of these features, we develop a novel evolutionary factor model (EFM) for multi-channel EEG data that systematically integrates information across replicated trials and allows for smoothly time-varying factor loadings. The individual EEGs series share common features across trials, thus, suggesting the need to pool information across trials, which motivates the use of the EFM for replicated time series. We explain the common co-movements of EEG signals through the existence of a small number of common factors. These latent factors are primarily responsible for processing the visual-motor task which, through the loadings, drive the behavior of the signals observed at different channels. The estimation of the time-varying loadings is based on the spectral decomposition of the estimated time-varying covariance matrix.

摘要

在本文中,我们开发了一种新颖的方法,用于解释在运动视觉任务实验中从多个试验记录的多通道脑电图(EEG)的动态结构。我们数据的初步分析提出了两个统计挑战。首先,每个通道的方差以及每对通道之间的互协方差会随时间演变。此外,互协方差分布在所有通道对中呈现出共同的结构,并且这些特征在所有试验中都一致出现。鉴于这些特征,我们为多通道EEG数据开发了一种新颖的进化因子模型(EFM),该模型系统地整合了重复试验中的信息,并允许因子载荷随时间平滑变化。各个EEG序列在试验之间具有共同特征,因此表明需要汇总试验间的信息,这促使我们将EFM用于重复时间序列。我们通过少量共同因子的存在来解释EEG信号的共同协动。这些潜在因子主要负责处理视觉运动任务,通过因子载荷驱动在不同通道观察到的信号行为。时变载荷的估计基于估计的时变协方差矩阵的谱分解。

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