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Assessing Cross-Dependencies Using Bivariate Multifractal Analysis

Authors :
Wendt, H.
Leonarduzzi, Roberto Fabio
Abry, P.
Roux, S.
Jaffard, S.
Seuret, S.
Wendt, H.
Leonarduzzi, Roberto Fabio
Abry, P.
Roux, S.
Jaffard, S.
Seuret, S.
Publication Year :
2018

Abstract

Multifractal analysis, notably with its recent wavelet-leader based formulation, has nowadays become a reference tool to characterize scale-free temporal dynamics in time series. It proved successful in numerous applications very diverse in nature. However, such successes remained restricted to univariate analysis while many recent applications call for the joint analysis of several components. Surprisingly, multivariate multifractal analysis remained mostly overlooked. The present contribution aims at defining a wavelet-leader based framework for multivariate multifractal analysis and at studying its properties and estimation performance. To better understand what properties of multivariate data are actually captured in multivariate multifractal analysis, a multivariate multifractal model is used as representative paradigm and permits to show that multivariate multifractal analysis puts in evidence transient and local dependencies that are not well quantified or even evidenced by the classical Pearson correlation coefficient.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1125199435
Document Type :
Electronic Resource