textabstractWe present a method of detecting and localising outliers in financial time series and other stochastic processes. The method checks the internal consistency of the scaling behaviour of the process within the paradigm of the multifractal spectrum. Deviation from the expected spectrum is interpreted as the potential presence of outliers. The detection part of the method is then supplemented by the localisation analysis part, using the local scaling properties of the time series. Localised outliers can then be removed one by one, with the possibility of dynamic verification of spectral properties. Both the multifractal spectrum formalism and the local scaling properties of the time series are implemented on the wavelet transform mo...
We show that a multifractal analysis offers a new and potentially promising avenue for quantifying t...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
The Random Parameter model was proposed to explain the structure of the covariance matrix in problem...
We present a method of detecting and localising outliers in financial time series and other stochast...
textabstractWe present a method of detecting and localising outliers in stochastic processes. The me...
We attempt empirical detection and characterization of power laws in financial time series. Fraction...
This article is dedicated to eliminate financial time series multifractal research method which is b...
In this article fractal scale exponent estimation approach using Continuous Wavelet Transform is con...
In this research Multifractal Indicators Evolution is considered. The Idea of this research is to pr...
This article is dedicated to eliminate financial time series multifractal research method which is b...
This article is dedicated for Stock indexes multifractal analysis using so called Wavelet Transform ...
We show how wavelet techniques allow to derive irregularity properties of functions on two particula...
We present a direct method of calculation of the multifractal spectrum from the wavelet decompositio...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
We show that a multifractal analysis offers a new and potentially promising avenue for quantifying t...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
The Random Parameter model was proposed to explain the structure of the covariance matrix in problem...
We present a method of detecting and localising outliers in financial time series and other stochast...
textabstractWe present a method of detecting and localising outliers in stochastic processes. The me...
We attempt empirical detection and characterization of power laws in financial time series. Fraction...
This article is dedicated to eliminate financial time series multifractal research method which is b...
In this article fractal scale exponent estimation approach using Continuous Wavelet Transform is con...
In this research Multifractal Indicators Evolution is considered. The Idea of this research is to pr...
This article is dedicated to eliminate financial time series multifractal research method which is b...
This article is dedicated for Stock indexes multifractal analysis using so called Wavelet Transform ...
We show how wavelet techniques allow to derive irregularity properties of functions on two particula...
We present a direct method of calculation of the multifractal spectrum from the wavelet decompositio...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
We show that a multifractal analysis offers a new and potentially promising avenue for quantifying t...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
The Random Parameter model was proposed to explain the structure of the covariance matrix in problem...