Abstract. In this paper, we propose an alternating proximal gradient method that solves convex minimization problems with three or more separable blocks in the objective function. Our method is based on the framework of alternating direction method of multipliers. The main computational effort in each iteration of the proposed method is to compute the proximal mappings of the involved convex functions. The global convergence result of the proposed method is established. We show that many interesting problems arising from machine learning, statistics, medical imaging and computer vision can be solved by the proposed method. Numerical results on problems such as latent variable graphical model selection, stable principal component pursuit and...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
AbstractThe alternating direction method is an attractive approach for large problems. The convergen...
Abstract. An extension ofthe proximal minimization algorithm is considered where only some of the mi...
A new approximate proximal point method for minimizing the sum of two convex functions is introduced...
The alternating direction method of multipliers (ADMM) is a benchmark for solving convex programming...
In this paper, we considers the separable convex programming problem with linear constraints. Its ob...
We propose an appealing line-search-based partial proximal alternating directions (LSPPAD) method fo...
In this paper we propose an alternating block version of a variable metric linesearch proximal gradi...
In this paper, we present a semi-proximal alternating direction method of multipliers (AD-MM) for so...
In this paper we propose an alternating block version of a variable metric linesearch proximal gradi...
We study a generalized version of the method of alternating directions as applied to the minimizatio...
This paper demonstrates a customized application of the classical proximal point algorithm (PPA) to ...
We study a generalized version of the method of alternating directions as applied to the minimizatio...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
AbstractThe alternating direction method is an attractive approach for large problems. The convergen...
Abstract. An extension ofthe proximal minimization algorithm is considered where only some of the mi...
A new approximate proximal point method for minimizing the sum of two convex functions is introduced...
The alternating direction method of multipliers (ADMM) is a benchmark for solving convex programming...
In this paper, we considers the separable convex programming problem with linear constraints. Its ob...
We propose an appealing line-search-based partial proximal alternating directions (LSPPAD) method fo...
In this paper we propose an alternating block version of a variable metric linesearch proximal gradi...
In this paper, we present a semi-proximal alternating direction method of multipliers (AD-MM) for so...
In this paper we propose an alternating block version of a variable metric linesearch proximal gradi...
We study a generalized version of the method of alternating directions as applied to the minimizatio...
This paper demonstrates a customized application of the classical proximal point algorithm (PPA) to ...
We study a generalized version of the method of alternating directions as applied to the minimizatio...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
AbstractThe alternating direction method is an attractive approach for large problems. The convergen...
Abstract. An extension ofthe proximal minimization algorithm is considered where only some of the mi...