We address the generic problem of extracting the scaling exponents of a stationary, self-affine process realized by a time series of finite length, where information about the process is not known a priori. Estimating the scaling exponents relies upon estimating the moments, or more typically structure functions, of the probability density of the differenced time series. If the probability density is heavy tailed, outliers strongly influence the scaling behavior of the moments. From an operational point of view, we wish to recover the scaling exponents of the underlying process by excluding a minimal population of these outliers. We test these ideas on a synthetically generated symmetric alpha-stable Levy process and show that the Levy expo...
This dissertation presents two projects on stochastic processes. The simplest stochastic processes a...
We derive theorems which outline explicit mechanisms by which anomalous scaling for the probability ...
This thesis focuses on various aspects of non-Gaussian distributions and processes sharing scaling p...
We address the generic problem of extracting the scaling exponents of a stationary, self-affine proc...
Empirical determination of the scaling properties and exponents of time series presents a formidable...
The methods currently used to determine the scaling exponent of a complex dynamic process described ...
The accurate estimation of scaling exponents is central in the observational study of scale-invarian...
The accurate estimation of scaling exponents is central in the observational study of scale-invarian...
Extreme events can come either from point processes, when the size or energy of the events is above ...
We derive general properties of the finite-size scaling of probability density functions and show t...
Cities, wealth, and earthquakes follow continuous power-law probability distributions such as the Pa...
More and more stochastic transport phenomena in various real-world systems prove to belong to the cl...
5 pages, 4 figuresInternational audienceWe present the universal features of the hitting probability...
Abstract—A statistical test is described for determining if scaling exponents vary over time. It is ...
We develop a scale-invariant truncated Lévy (STL) process to describe physical systems characterized...
This dissertation presents two projects on stochastic processes. The simplest stochastic processes a...
We derive theorems which outline explicit mechanisms by which anomalous scaling for the probability ...
This thesis focuses on various aspects of non-Gaussian distributions and processes sharing scaling p...
We address the generic problem of extracting the scaling exponents of a stationary, self-affine proc...
Empirical determination of the scaling properties and exponents of time series presents a formidable...
The methods currently used to determine the scaling exponent of a complex dynamic process described ...
The accurate estimation of scaling exponents is central in the observational study of scale-invarian...
The accurate estimation of scaling exponents is central in the observational study of scale-invarian...
Extreme events can come either from point processes, when the size or energy of the events is above ...
We derive general properties of the finite-size scaling of probability density functions and show t...
Cities, wealth, and earthquakes follow continuous power-law probability distributions such as the Pa...
More and more stochastic transport phenomena in various real-world systems prove to belong to the cl...
5 pages, 4 figuresInternational audienceWe present the universal features of the hitting probability...
Abstract—A statistical test is described for determining if scaling exponents vary over time. It is ...
We develop a scale-invariant truncated Lévy (STL) process to describe physical systems characterized...
This dissertation presents two projects on stochastic processes. The simplest stochastic processes a...
We derive theorems which outline explicit mechanisms by which anomalous scaling for the probability ...
This thesis focuses on various aspects of non-Gaussian distributions and processes sharing scaling p...