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Multivariate scale-free temporal dynamics: From spectral (Fourier) to fractal (wavelet) analysis

机译:多变量无垢时间动态:从光谱(傅里叶)到分形(小波)分析

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摘要

The Fourier transform (or spectral analysis) has become a universal tool for data analysis in many different real-world applications, notably for the characterization of temporal/spatial dynamics in data. The wavelet transform (or multiscale analysis) can be regarded as tailoring spectral estimation to classes of signals or functions defined by scale-free dynamics. The present contribution first formally reviews these connections in the context of multivariate stationary processes, and second details the ability of the wavelet transform to extend multivariate scale-free temporal dynamics analysis beyond second-order statistics (Fourier spectrum and autocovariance function) to multivariate self-similarity and multivariate multifractality. Illustrations and qualitative discussions of the relevance of scale-free dynamics for macroscopic brain activity description using MEG data are proposed.
机译:傅里叶变换(或光谱分析)已成为许多不同现实应用中的数据分析的普遍工具,特别是为了表征数据中的时间/空间动态。 小波变换(或多尺度分析)可以被视为对由无比例动态定义的信号或函数的类别定制光谱估计。 本贡献首先在多变量静止过程的上下文中审查这些连接,第二细节小波变换能够扩展多变量无量散的时间动态分析,超出二阶统计(傅里叶频谱和自电转道函数)到多变量自行 - 相似性和多变量多变性。 提出了使用MEG数据的宏观脑活动的无比例动态的相关性的图示和定性讨论。

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