textabstractWe present a method of detecting and localising outliers in 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 modulus maxima tree
International audienceThe multifractal formalism for singular measures is revisited using the wavele...
This article is dedicated to eliminate financial time series multifractal research method which is b...
The multifractal spectrum characterizes the scaling and singularity structures of signals and proves...
textabstractWe present a method of detecting and localising outliers in financial time series and ot...
We present a method of detecting and localising outliers in stochastic processes. The method checks ...
The properties of several multifractal formalisms based on wavelet coefficients are compared from bo...
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...
We discuss a simple method for analysing the local scaling behavior of the fluctuations of random pr...
International audienceMultifractal analysis provides a global description for the spatial fluctuatio...
Abstract—Multifractal analysis, which mostly consists of mea-suring scaling exponents, is becoming a...
Conference PaperThe multifractal spectrum characterizes the scaling and singularity structures of si...
International audienceIn this course, we give the basics of the part of multifractal theory that int...
International audienceMultifractal analysis has become a powerful signal processing tool that charac...
International audienceThe multifractal formalism for singular measures is revisited using the wavele...
This article is dedicated to eliminate financial time series multifractal research method which is b...
The multifractal spectrum characterizes the scaling and singularity structures of signals and proves...
textabstractWe present a method of detecting and localising outliers in financial time series and ot...
We present a method of detecting and localising outliers in stochastic processes. The method checks ...
The properties of several multifractal formalisms based on wavelet coefficients are compared from bo...
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...
We discuss a simple method for analysing the local scaling behavior of the fluctuations of random pr...
International audienceMultifractal analysis provides a global description for the spatial fluctuatio...
Abstract—Multifractal analysis, which mostly consists of mea-suring scaling exponents, is becoming a...
Conference PaperThe multifractal spectrum characterizes the scaling and singularity structures of si...
International audienceIn this course, we give the basics of the part of multifractal theory that int...
International audienceMultifractal analysis has become a powerful signal processing tool that charac...
International audienceThe multifractal formalism for singular measures is revisited using the wavele...
This article is dedicated to eliminate financial time series multifractal research method which is b...
The multifractal spectrum characterizes the scaling and singularity structures of signals and proves...