This paper provides a quick overview on three machine learning regression techniques for the uncertainty quantification and the parametric modeling of the responses of electronic systems. Specifically, in this work support vector machine, least-squares support vector machine and Gaussian process regressions are adopted to build accurate and fast-to-evaluate metamodels for the prediction of the behaviour of the output of interest in stochastic systems as a function of the uncertain parameters. The above regressions techniques are trained from a limited set of training pairs provided by either measurements or simulations of the full-computational model. The resulting metamodels can be suitably adopted for both uncertainty quantification and o...
Modern electricity consumers place increasingly high demands on the level of reliability of power su...
This paper presents an innovative modeling strategy for the construction of efficient and compact su...
This paper deals with the development of a Machine Learning (ML)-based regression for the constructi...
This paper presents a preliminary application of the support vector machine regression to the modeli...
This paper deals with the application of the support vector machine (SVM) and the least-squares SVM ...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...
This paper investigates the application of support vector machine to the modeling of high-speed inte...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
International audienceThis paper deals with the application of the partial least squares (PLS) regre...
Two non-intrusive uncertainty propagation approaches are proposed for the performance analysis of en...
This paper presents a preliminary version of an active learning (AL) scheme for the sample selection...
This paper describes the application of Least-Squares Support Vector Machine (LS-SVM) training to an...
International audienceThis paper focuses on the application of the partial least squares (PLS) regre...
Modern electricity consumers place increasingly high demands on the level of reliability of power su...
This paper presents an innovative modeling strategy for the construction of efficient and compact su...
This paper deals with the development of a Machine Learning (ML)-based regression for the constructi...
This paper presents a preliminary application of the support vector machine regression to the modeli...
This paper deals with the application of the support vector machine (SVM) and the least-squares SVM ...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...
This paper investigates the application of support vector machine to the modeling of high-speed inte...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
International audienceThis paper deals with the application of the partial least squares (PLS) regre...
Two non-intrusive uncertainty propagation approaches are proposed for the performance analysis of en...
This paper presents a preliminary version of an active learning (AL) scheme for the sample selection...
This paper describes the application of Least-Squares Support Vector Machine (LS-SVM) training to an...
International audienceThis paper focuses on the application of the partial least squares (PLS) regre...
Modern electricity consumers place increasingly high demands on the level of reliability of power su...
This paper presents an innovative modeling strategy for the construction of efficient and compact su...
This paper deals with the development of a Machine Learning (ML)-based regression for the constructi...