textabstractWe present a simple and robust strategy for the selection of sampling points in uncertainty quantification. The goal is to achieve the fastest possible convergence in the cumulative distribution function of a stochastic output of interest. We assume that the output of interest is the outcome of a computationally expensive nonlinear mapping of an input random variable, whose probability density function is known. We use a radial function basis to construct an accurate interpolant of the mapping. This strategy enables adding new sampling points one at a time, adaptively. This takes into full account the previous evaluations of the target nonlinear function. We present comparisons with a stochastic collocation method based on the C...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
For high-quality image rendering using Monte Carlo methods, a large number of samples are required t...
A combined method of the sensitivity-based and random sampling-based methodologies is proposed for e...
We present a simple and robust strategy for the selection of sampling points in uncertainty quantifi...
In this paper we present a stochastic collocation method for quantifying uncertainty in models with ...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
Improving efficiency of the importance sampler is at the centre of research on Monte Carlo methods. ...
Fixed point iteration is a common strategy to handle interdisciplinary coupling within a coupled mul...
Understanding and describing expensive black box functions such as physical simulations is a common ...
In non-linear estimations, it is common to assess sampling uncertainty by bootstrap inference. For c...
In adaptive sampling and optimization methods, the uncertainty estimators are used to guide the sele...
Most physical systems are inevitably affected by uncertainties due to natural variabili-ties or inco...
We describe an algorithm for adaptive inference in probabilistic programs. Dur-ing sampling, the alg...
Abstract. The usual approach to deal with noise present in many real-world optimization problems is ...
This book presents the details of the BONUS algorithm and its real world applications in areas like ...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
For high-quality image rendering using Monte Carlo methods, a large number of samples are required t...
A combined method of the sensitivity-based and random sampling-based methodologies is proposed for e...
We present a simple and robust strategy for the selection of sampling points in uncertainty quantifi...
In this paper we present a stochastic collocation method for quantifying uncertainty in models with ...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
Improving efficiency of the importance sampler is at the centre of research on Monte Carlo methods. ...
Fixed point iteration is a common strategy to handle interdisciplinary coupling within a coupled mul...
Understanding and describing expensive black box functions such as physical simulations is a common ...
In non-linear estimations, it is common to assess sampling uncertainty by bootstrap inference. For c...
In adaptive sampling and optimization methods, the uncertainty estimators are used to guide the sele...
Most physical systems are inevitably affected by uncertainties due to natural variabili-ties or inco...
We describe an algorithm for adaptive inference in probabilistic programs. Dur-ing sampling, the alg...
Abstract. The usual approach to deal with noise present in many real-world optimization problems is ...
This book presents the details of the BONUS algorithm and its real world applications in areas like ...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
For high-quality image rendering using Monte Carlo methods, a large number of samples are required t...
A combined method of the sensitivity-based and random sampling-based methodologies is proposed for e...