International audienceTo estimate a low rank matrix from noisy observations, truncated singular value decomposition has been extensively used and studied: empirical singular values are hard thresholded and empirical singular vectors remain untouched. Recent estimators not only truncate but also shrink the singular values. In the same vein, we propose a continuum of thresholding and shrinking functions that encompasses hard and soft thresholding. To avoid an unstable and costly cross-validation search of their thresholding and shrinking parameters, we propose new rules to select these two regularization parameters from the data. In particular we propose a generalized Stein unbiased risk estimation criterion that does not require knowledge of...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...
We present the R package denoiseR dedicated to low-rank matrix estimation. First, we briefly review ...
The `0 minimization of compressed sensing is often relaxed to `1, which yields easy computation usin...
We consider the problem of estimating a low-rank signal matrix from noisy measurements under the ass...
Abstract. The truncated singular value decomposition (SVD) of the measurement matrix is the optimal ...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
Singular value decomposition is a widely used tool for dimension reduction in multivariate analysis....
I talk about two recent studies on singular value shrinkage. 1. We develop singular value shrinkage ...
Abstract. Consider the problem of estimating the entries of a large matrix, when the observed entrie...
This paper considers the problem of estimating a high-dimensional vector θ ∈ ℝn from a noisy one-tim...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
Rank minimization can be converted into tractable surrogate problems, such as Nuclear Norm Minimizat...
The generalized and smooth James-Stein thresholding functions link and extend the thresholding funct...
International audienceA highly popular regularized (shrinkage) covariance matrix estimator is the sh...
Many statistical learning methods such as matrix completion, matrix regression, and multiple respons...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...
We present the R package denoiseR dedicated to low-rank matrix estimation. First, we briefly review ...
The `0 minimization of compressed sensing is often relaxed to `1, which yields easy computation usin...
We consider the problem of estimating a low-rank signal matrix from noisy measurements under the ass...
Abstract. The truncated singular value decomposition (SVD) of the measurement matrix is the optimal ...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
Singular value decomposition is a widely used tool for dimension reduction in multivariate analysis....
I talk about two recent studies on singular value shrinkage. 1. We develop singular value shrinkage ...
Abstract. Consider the problem of estimating the entries of a large matrix, when the observed entrie...
This paper considers the problem of estimating a high-dimensional vector θ ∈ ℝn from a noisy one-tim...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
Rank minimization can be converted into tractable surrogate problems, such as Nuclear Norm Minimizat...
The generalized and smooth James-Stein thresholding functions link and extend the thresholding funct...
International audienceA highly popular regularized (shrinkage) covariance matrix estimator is the sh...
Many statistical learning methods such as matrix completion, matrix regression, and multiple respons...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...
We present the R package denoiseR dedicated to low-rank matrix estimation. First, we briefly review ...
The `0 minimization of compressed sensing is often relaxed to `1, which yields easy computation usin...