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STATIONARY SUBSPACE ANALYSIS OF NONSTATIONARY PROCESSES

机译:非平稳过程的平稳子空间分析

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Stationary subspace analysis (SSA) is a recent technique for finding linear transformations of nonstationary processes that are stationary in the limited sense that the first two moments or means and lag-0 covariances are time-invariant. It finds a matrix that projects the nonstationary data onto a stationary subspace by minimizing a Kullback-Leibler divergence between Gaussian distributions measuring the nonconstancy of the means and covariances across several segments. We propose an SSA procedure for general multivariate, second-order nonstationary processes. It relies on the asymptotic uncorrelatedness of the discrete Fourier transform of a stationary time series to define a measure of departure from stationarity, which is then minimized to find the stationary subspace. The dimension of the subspace is estimated using a sequential testing procedure, and its asymptotic properties are discussed. We illustrate the broader applicability and better performance of our method in comparison to existing SSA methods through simulations and discuss an application in analyzing electroencephalogram (EEG) data from brain-computer interface (BCI) experiments.
机译:平稳子空间分析(SSA)是一种用于发现非平稳过程的线性变换的最新技术,该平稳过程在前两个矩或均值和lag-0协方差是时间不变的有限意义上是固定的。它找到一个矩阵,该矩阵通过最小化测量多个部分的均值和协方差的非恒定性的高斯分布之间的Kullback-Leibler散度,将非平稳数据投影到固定子空间上。我们为一般的多元二阶非平稳过程提出了SSA程序。它依靠平稳时间序列的离散傅立叶变换的渐近不相关性来定义偏离平稳性的量度,然后将其最小化以找到平稳子空间。子空间的维数使用顺序测试程序进行估计,并讨论其渐近性质。我们通过仿真说明了与现有的SSA方法相比,该方法具有更广泛的适用性和更好的性能,并讨论了在分析脑机接口(BCI)实验的脑电图(EEG)数据中的应用。

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