In this article, we propose the use of partitioning and clustering methods as an alternative to Gaussian quadrature for stochastic collocation (SC). The key idea is to use cluster centers as the nodes for collocation. In this way, we can extend the use of collocation methods to uncertainty propagation with multivariate, correlated input. The approach is particularly useful in situations where the probability distribution of the input is unknown, and only a sample from the input distribution is available. We examine several clustering methods and assess their suitability for stochastic collocation numerically using the Genz test functions as benchmark. The proposed methods work well, most notably for the challenging case of nonlinea...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...
This thesis introduces three variable clustering methods designed in the context of diversified port...
Cataloged from PDF version of article.This paper considers large-scale stochastic simulations with c...
In this article, we propose the use of partitioning and clustering methods as an alternative to Gau...
In this article, we propose the use of partitioning and clustering methods as an alternative to Gaus...
Abstract. Correlation clustering is the problem of finding a crisp par-tition of the vertices of a c...
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 ...
Correlation clustering is the problem of finding a crisp partition of the vertices of a correlation ...
Non-intrusive polynomial chaos expansion (PCE) and stochastic collocation (SC) meth-ods are attracti...
This report describes a stochastic collocation method to adequately handle a physically intrinsic un...
This paper considers stochastic simulations with correlated input random variables having NORmal-To-...
[Abstract]: Noise significantly affects cluster quality. Conventional clustering methods hardly dete...
Considering an uncertain correlation length of the input random fields described by a Karhunen-Loève...
This paper considers large-scale stochastic simulations with correlated inputs having normal-to-anyt...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...
This thesis introduces three variable clustering methods designed in the context of diversified port...
Cataloged from PDF version of article.This paper considers large-scale stochastic simulations with c...
In this article, we propose the use of partitioning and clustering methods as an alternative to Gau...
In this article, we propose the use of partitioning and clustering methods as an alternative to Gaus...
Abstract. Correlation clustering is the problem of finding a crisp par-tition of the vertices of a c...
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 ...
Correlation clustering is the problem of finding a crisp partition of the vertices of a correlation ...
Non-intrusive polynomial chaos expansion (PCE) and stochastic collocation (SC) meth-ods are attracti...
This report describes a stochastic collocation method to adequately handle a physically intrinsic un...
This paper considers stochastic simulations with correlated input random variables having NORmal-To-...
[Abstract]: Noise significantly affects cluster quality. Conventional clustering methods hardly dete...
Considering an uncertain correlation length of the input random fields described by a Karhunen-Loève...
This paper considers large-scale stochastic simulations with correlated inputs having normal-to-anyt...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...
This thesis introduces three variable clustering methods designed in the context of diversified port...
Cataloged from PDF version of article.This paper considers large-scale stochastic simulations with c...