Intrinsic multi-scale analysis: A multi-variate empirical mode decomposition framework

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Abstract

A novel multi-scale approach for quantifying both inter- and intra-component dependence of a complex system is introduced. This is achieved using empirical mode decomposition (EMD), which, unlike conventional scale-estimation methods, obtains a set of scales reflecting the underlying oscillations at the intrinsic scale level. This enables the data-driven operation of several standard data-association measures (intrinsic correlation, intrinsic sample entropy (SE), intrinsic phase synchrony) and, at the same time, preserves the physical meaning of the analysis. The utility of multi-variate extensions of EMD is highlighted, both in terms of robust scale alignment between system components, a pre-requisite for inter-component measures, and in the estimation of feature relevance. We also illuminate that the properties of EMD scales can be used to decouple amplitude and phase information, a necessary step in order to accurately quantify signal dynamics through correlation and SE analysis which are otherwise not possible. Finally, the proposed multi-scale framework is applied to detect directionality, and higher order features such as coupling and regularity, in both synthetic and biological systems.

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Looney, D., Hemakom, A., & Mandic, D. P. (2015). Intrinsic multi-scale analysis: A multi-variate empirical mode decomposition framework. Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences, 471(2173). https://doi.org/10.1098/rspa.2014.0709

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