For functions with power-law singularities we consider series expansions whose coefficients have been determined by Monte Carlo simulation. In many practical problems the relative noise of the coefficients is constant or slowly increasing with the order. We modeled real Monte Carlo expansions by test series with known singularity structure where noise with different strength and form is imposed on the coefficients. The efficiency of different standard methods of series analysis (ratio method, Pad\ue9 approximants, differential approximants) has been tested together with smoothing methods based on repeated partial summation of the series. We found the Pad\ue9 method to give reasonable estimates and its accuracy is independent of the smoothin...
Stochastic partial differential equations arise when modelling uncertain phenomena. Here the emphasi...
This paper aims at comparing theoretical approximations of the tail of the maximum of stochastic pro...
The guide to the expression of uncertainty in measurement (GUM) describes the law of propagation of ...
For functions with power-law singularities we consider series expansions whose coefficients have bee...
An infinitely divisible random vector without Gaussian component admits representations of shot nois...
The authors describe a simple and general algorithm to calculate series expansions in enumeration pr...
The probability density function (PDF) of a random variable associated with the solution of a partia...
A method by the authors allows to approximate a function by using its Fourier polynomials with noisy...
his paper will trace the history and development of a useful stochastic method for approximating cer...
RESUMEN: Se ha implementado un esquema de Montecarlo apto para la determinación de los coeficientes ...
We introduce computationally efficient Monte Carlo methods for studying the statistics of stochastic...
Asymptotic residue expansions are proposed for inverting probability generating functions (PGFs) and...
En este artículo se construyen soluciones analítico-numéricas de ecuaciones diferenciales lineales a...
AbstractSince the ground-breaking work of Baker and others, the analysis of series expansions using ...
SUMMARY A numerical technique is introduced that reduces exponentially the time required for Monte...
Stochastic partial differential equations arise when modelling uncertain phenomena. Here the emphasi...
This paper aims at comparing theoretical approximations of the tail of the maximum of stochastic pro...
The guide to the expression of uncertainty in measurement (GUM) describes the law of propagation of ...
For functions with power-law singularities we consider series expansions whose coefficients have bee...
An infinitely divisible random vector without Gaussian component admits representations of shot nois...
The authors describe a simple and general algorithm to calculate series expansions in enumeration pr...
The probability density function (PDF) of a random variable associated with the solution of a partia...
A method by the authors allows to approximate a function by using its Fourier polynomials with noisy...
his paper will trace the history and development of a useful stochastic method for approximating cer...
RESUMEN: Se ha implementado un esquema de Montecarlo apto para la determinación de los coeficientes ...
We introduce computationally efficient Monte Carlo methods for studying the statistics of stochastic...
Asymptotic residue expansions are proposed for inverting probability generating functions (PGFs) and...
En este artículo se construyen soluciones analítico-numéricas de ecuaciones diferenciales lineales a...
AbstractSince the ground-breaking work of Baker and others, the analysis of series expansions using ...
SUMMARY A numerical technique is introduced that reduces exponentially the time required for Monte...
Stochastic partial differential equations arise when modelling uncertain phenomena. Here the emphasi...
This paper aims at comparing theoretical approximations of the tail of the maximum of stochastic pro...
The guide to the expression of uncertainty in measurement (GUM) describes the law of propagation of ...