The problem of estimating a high-dimensional sparse vector $\boldsymbol{\theta} \in \mathbb{R}^n$ from an observation in i.i.d. Gaussian noise is considered. The performance is measured using squared-error loss. An empirical Bayes shrinkage estimator, derived using a Bernoulli-Gaussian prior, is analyzed and compared with the well-known soft-thresholding estimator. We obtain concentration inequalities for the Stein's unbiased risk estimate and the loss function of both estimators. The results show that for large $n$, both the risk estimate and the loss function concentrate on deterministic values close to the true risk. Depending on the underlying $\boldsymbol{\theta}$, either the proposed empirical Bayes (eBayes) estimator or soft-threshol...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
8 pages, 10 figuresInternational audienceCompressed sensing is designed to measure sparse signals di...
The problem of estimating a high-dimensional sparse vector $\theta \in \mathbb{R}^n$ from an observa...
The problem of estimating a high-dimensional sparse vector θ ∈ ℝ n from an observation in i.i.d. Gau...
Abstract—We consider signals that follow a parametric dis-tribution where the parameter values are u...
This paper considers the problem of estimating a high-dimensional vector θ ∈ ℝn from a noisy one-tim...
This paper considers the problem of estimating a high-dimensional vector of parameters $\boldsymbol{...
International audienceThere are two major routes to address the ubiquitous family of inverse problem...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
International audienceCompressed Sensing (CS) is now a well-established research area and a plethora...
We consider a problem of recovering a high-dimensional vector µ observed in white noise, where the u...
Consider the standard Gaussian linear regression model Y = X theta(0) + epsilon, where Y is an eleme...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
8 pages, 10 figuresInternational audienceCompressed sensing is designed to measure sparse signals di...
The problem of estimating a high-dimensional sparse vector $\theta \in \mathbb{R}^n$ from an observa...
The problem of estimating a high-dimensional sparse vector θ ∈ ℝ n from an observation in i.i.d. Gau...
Abstract—We consider signals that follow a parametric dis-tribution where the parameter values are u...
This paper considers the problem of estimating a high-dimensional vector θ ∈ ℝn from a noisy one-tim...
This paper considers the problem of estimating a high-dimensional vector of parameters $\boldsymbol{...
International audienceThere are two major routes to address the ubiquitous family of inverse problem...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
International audienceCompressed Sensing (CS) is now a well-established research area and a plethora...
We consider a problem of recovering a high-dimensional vector µ observed in white noise, where the u...
Consider the standard Gaussian linear regression model Y = X theta(0) + epsilon, where Y is an eleme...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
8 pages, 10 figuresInternational audienceCompressed sensing is designed to measure sparse signals di...