A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined from a signal that preserves the pointwise Hölder exponent (multifractal) structure of a signal but randomises the locations of the original data values with respect to this (ϕ=0), to the original signal itself(ϕ=1). We demonstrate that this continuum may be populated with synthetic time series by undertaking selective randomisation of wavelet phases using a dual-tree complex wavelet transform. That is, the ϕ=0 end of the continuum is realised using the recently proposed iterated, amplitude adjusted wavelet transform algorithm (Keylock, 2017) that fully randomises the wavelet phases. This is extended to the GMR formulation by selective phase r...
International audienceMultifractal analysis has become a standard signal processing tool successfull...
The concept of multifractality offers a powerful formal tool to filter out a multitude of the most r...
An algorithm is described that can generate random variants of a time series while preserving the pr...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
In this research Multifractal Indicators Evolution is considered. The Idea of this research is to pr...
In this article fractal scale exponent estimation approach using Continuous Wavelet Transform is con...
We present a comparative analysis of multifractal properties of financial time series built on stock...
Recently the statistical characterizations of financial markets based on physics concepts and method...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
22 pages, 11 figuresIt has been repeatedly reported that time series of returns in stock markets are...
We show that a multifractal analysis offers a new and potentially promising avenue for quantifying t...
This article is dedicated for Stock indexes multifractal analysis using so called Wavelet Transform ...
The multifractal model of asset returns captures the volatility persis-tence of many financial time ...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
International audienceMultifractal analysis has become a standard signal processing tool successfull...
The concept of multifractality offers a powerful formal tool to filter out a multitude of the most r...
An algorithm is described that can generate random variants of a time series while preserving the pr...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
In this research Multifractal Indicators Evolution is considered. The Idea of this research is to pr...
In this article fractal scale exponent estimation approach using Continuous Wavelet Transform is con...
We present a comparative analysis of multifractal properties of financial time series built on stock...
Recently the statistical characterizations of financial markets based on physics concepts and method...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
22 pages, 11 figuresIt has been repeatedly reported that time series of returns in stock markets are...
We show that a multifractal analysis offers a new and potentially promising avenue for quantifying t...
This article is dedicated for Stock indexes multifractal analysis using so called Wavelet Transform ...
The multifractal model of asset returns captures the volatility persis-tence of many financial time ...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
International audienceMultifractal analysis has become a standard signal processing tool successfull...
The concept of multifractality offers a powerful formal tool to filter out a multitude of the most r...
An algorithm is described that can generate random variants of a time series while preserving the pr...