This paper studies a new nonconvex optimization problem aimed at recovering high-dimensional covariance matrices with a low rank plus sparse structure. The objective is composed of a smooth nonconvex loss and a nonsmooth composite penalty. A number of structural analytic properties of the new heuristics are presented and proven, thus providing the necessary framework for further investigating the statistical applications. In particular, the first and the second derivative of the smooth loss are obtained, its local convexity range is derived, and the Lipschitzianity of its gradient is shown. This opens the path to solve the described problem via a proximal gradient algorithm
International audienceWe study a challenging problem in machine learning that is the reduced-rank mu...
In honor of Professor Paul Tseng, who went missing while on a kayak trip in Jinsha river, China, on ...
The thresholding covariance estimator has nice asymptotic properties for estimating sparse large cov...
none1siThe present thesis concerns large covariance matrix estimation via composite minimization und...
High-dimensional covariance matrix estimation is one of the fundamental and important problems in mu...
We study the estimation of low rank matrices via nonconvex optimization. Compared with convex relaxa...
This paper aims at achieving a simultaneously sparse and low-rank estimator from the semidef-inite p...
Recently, major attention has been given to penalized log-likelihood estimators for sparse precision...
This paper concerns large covariance matrix estimation via composite minimization under the assumpti...
Sparse modeling has been highly successful in many real-world applications. While a lot of interests...
The thresholding covariance estimator has nice asymptotic properties for estimating sparse large cov...
In recent years, there has been a growing interest in mathematical models leading to the minimizatio...
We consider the class of convex minimization prob-lems, composed of a self-concordant function, such...
In this thesis the problem of interest is, within the setting of financial risk management, covarian...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
International audienceWe study a challenging problem in machine learning that is the reduced-rank mu...
In honor of Professor Paul Tseng, who went missing while on a kayak trip in Jinsha river, China, on ...
The thresholding covariance estimator has nice asymptotic properties for estimating sparse large cov...
none1siThe present thesis concerns large covariance matrix estimation via composite minimization und...
High-dimensional covariance matrix estimation is one of the fundamental and important problems in mu...
We study the estimation of low rank matrices via nonconvex optimization. Compared with convex relaxa...
This paper aims at achieving a simultaneously sparse and low-rank estimator from the semidef-inite p...
Recently, major attention has been given to penalized log-likelihood estimators for sparse precision...
This paper concerns large covariance matrix estimation via composite minimization under the assumpti...
Sparse modeling has been highly successful in many real-world applications. While a lot of interests...
The thresholding covariance estimator has nice asymptotic properties for estimating sparse large cov...
In recent years, there has been a growing interest in mathematical models leading to the minimizatio...
We consider the class of convex minimization prob-lems, composed of a self-concordant function, such...
In this thesis the problem of interest is, within the setting of financial risk management, covarian...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
International audienceWe study a challenging problem in machine learning that is the reduced-rank mu...
In honor of Professor Paul Tseng, who went missing while on a kayak trip in Jinsha river, China, on ...
The thresholding covariance estimator has nice asymptotic properties for estimating sparse large cov...