Let $Y\in\R^n$ be a random vector with mean $s$ and covariance matrix $\sigma^2P_n\tra{P_n}$ where $P_n$ is some known $n\times n$-matrix. We construct a statistical procedure to estimate $s$ as well as under moment condition on $Y$ or Gaussian hypothesis. Both cases are developed for known or unknown $\sigma^2$. Our approach is free from any prior assumption on $s$ and is based on non-asymptotic model selection methods. Given some linear spaces collection $\{S_m,\ m\in\M\}$, we consider, for any $m\in\M$, the least-squares estimator $\hat{s}_m$ of $s$ in $S_m$. Considering a penalty function that is not linear to the dimensions of the $S_m$'s, we select some $\hat{m}\in\M$ in order to get an estimator $\hat{s}_{\hat{m}}$ with a quadratic r...
Our day-to-day experience suggests that certain variables are local in their effects. The influence ...
The problem of the parameters estima-tion for the polynomial in the input variables regression funct...
We consider a Stein's approach to estimate a covariance matrix using regularization of the sample co...
Let Y be a Gaussian vector of ℝn of mean s and diagonal covariance matrix Γ. Our aim is to estimate ...
For linear discrete state-space models, under certain conditions, the linear least-mean-squares filt...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
AbstractIn this paper, we study the problem of nonparametric estimation of the mean and variance fun...
For linear discrete state-space models, under certain conditions, the linear least mean squares (LLM...
International audienceFor linear discrete state-space models, under certain conditions, the linear l...
In this paper, we study the model selection and structure specification for the generalised semi-var...
Machine learning is a hot topic in today's society. Data sets of varying sizes show up in a number o...
Performance of regularized least-squares estimation in noisy compressed sensing is analyzed in the l...
Machine learning is a hot topic in today's society. Data sets of varying sizes show up in a number o...
In this paper, we propose several finite-sample specification tests for multivariate linear regressi...
AbstractAn optimized robust filtering algorithm for uncertain discrete-time systems is presented. To...
Our day-to-day experience suggests that certain variables are local in their effects. The influence ...
The problem of the parameters estima-tion for the polynomial in the input variables regression funct...
We consider a Stein's approach to estimate a covariance matrix using regularization of the sample co...
Let Y be a Gaussian vector of ℝn of mean s and diagonal covariance matrix Γ. Our aim is to estimate ...
For linear discrete state-space models, under certain conditions, the linear least-mean-squares filt...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
AbstractIn this paper, we study the problem of nonparametric estimation of the mean and variance fun...
For linear discrete state-space models, under certain conditions, the linear least mean squares (LLM...
International audienceFor linear discrete state-space models, under certain conditions, the linear l...
In this paper, we study the model selection and structure specification for the generalised semi-var...
Machine learning is a hot topic in today's society. Data sets of varying sizes show up in a number o...
Performance of regularized least-squares estimation in noisy compressed sensing is analyzed in the l...
Machine learning is a hot topic in today's society. Data sets of varying sizes show up in a number o...
In this paper, we propose several finite-sample specification tests for multivariate linear regressi...
AbstractAn optimized robust filtering algorithm for uncertain discrete-time systems is presented. To...
Our day-to-day experience suggests that certain variables are local in their effects. The influence ...
The problem of the parameters estima-tion for the polynomial in the input variables regression funct...
We consider a Stein's approach to estimate a covariance matrix using regularization of the sample co...