International audienceAn increasing number of time-consuming simulators exhibit a complex noise structure that depends on the inputs. To conduct studies with limited budgets of evaluations, new surrogate methods are required to model simultaneously the mean and variance fields. To this end, we present recent advances in Gaussian process modeling with input-dependent noise. First, we describe a simple, yet efficient, joint modeling framework that rely on replication for both speed and accuracy. Then we tackle the issue of leveraging replication and exploration in a sequential manner for various goals, such as obtaining a globally accurate model, for optimization, contour finding, and active subspace estimation. We illustrate these on applica...
International audienceRegression models based on RKHS methods are used to estimate the regression fu...
26 pagesLet $Y$ be a Gaussian vector of $\R^n$ of mean $s$ and diagonal covariance matrix $\Gamma$. ...
AbstractIn this paper, we study the problem of nonparametric estimation of the mean and variance fun...
A theorem about simulation of a Gaussian stochastic process with given accuracy and reliability in L...
The proliferation of (low-cost) sensors provokes new challenges in data fusion. This is related to t...
In time series regressions with nonparametrically autocorrelated errors, it is now standard empirica...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
For making decisions in everyday life we often have first to infer the set of environmental features...
The estimation for distribution of the norms of strictly sub-Gaussian random processes in the space ...
The measurement of multiple ringdown modes in gravitational waves from binary black hole mergers wil...
<p>Recently, singular learning theory has been analyzed using algebraic geometry as its basis....
Testing for the significance of a subset of regression coefficients in a linear model, a staple of s...
The efficient numerical simulation of models described by partial differential equations (PDEs) is a...
We employ linear wave theory to study long range attenuation of ocean waves caused by small, random ...
Approximation of some classes of random processes by cubic splines with given accuracy and reliabili...
International audienceRegression models based on RKHS methods are used to estimate the regression fu...
26 pagesLet $Y$ be a Gaussian vector of $\R^n$ of mean $s$ and diagonal covariance matrix $\Gamma$. ...
AbstractIn this paper, we study the problem of nonparametric estimation of the mean and variance fun...
A theorem about simulation of a Gaussian stochastic process with given accuracy and reliability in L...
The proliferation of (low-cost) sensors provokes new challenges in data fusion. This is related to t...
In time series regressions with nonparametrically autocorrelated errors, it is now standard empirica...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
For making decisions in everyday life we often have first to infer the set of environmental features...
The estimation for distribution of the norms of strictly sub-Gaussian random processes in the space ...
The measurement of multiple ringdown modes in gravitational waves from binary black hole mergers wil...
<p>Recently, singular learning theory has been analyzed using algebraic geometry as its basis....
Testing for the significance of a subset of regression coefficients in a linear model, a staple of s...
The efficient numerical simulation of models described by partial differential equations (PDEs) is a...
We employ linear wave theory to study long range attenuation of ocean waves caused by small, random ...
Approximation of some classes of random processes by cubic splines with given accuracy and reliabili...
International audienceRegression models based on RKHS methods are used to estimate the regression fu...
26 pagesLet $Y$ be a Gaussian vector of $\R^n$ of mean $s$ and diagonal covariance matrix $\Gamma$. ...
AbstractIn this paper, we study the problem of nonparametric estimation of the mean and variance fun...