The sparse nonlinear programming (SNP) problem has wide applications in signal and image processing, machine learning and finance, etc. However, the computational challenge posed by SNP has not yet been well resolved due to the nonconvex and discontinuous ℓ-norm involved. In this paper, we resolve this numerical challenge by developing a fast Newton-type algorithm. As a theoretical cornerstone, we establish a first-order optimality condition for SNP based on the concept of strong β-Lagrangian stationarity via the Lagrangian function, and reformulate it as a system of nonlinear equations called the Lagrangian equations. The nonsingularity of the corresponding Jacobian is discussed, based on which the Lagrange–Newton algorithm (LNA) is then p...
In this paper we introduce a new exact augmented Lagrangian function for the solution ofgeneral non...
The main purpose of this work is to associate a wide class of Lagrangian functions with a nonconvex,...
The spectral projected gradient method (SPG) is an algorithm for large-scale bound-constrained optim...
In this paper we propose a primal-dual algorithm for the solution of general nonlinear programming p...
Abstract. We describe an enhanced version of the primal-dual interior point algorithm in Lasdon, Plu...
This paper establishes a theory framework of a class of nonlinear Lagrangians for solving nonlinear ...
Over the past decades, Linear Programming (LP) has been widely used in different areas and considere...
We present a sparse Gauss-Newton solver for accelerated sensitivity analysis with applications to a ...
The basic problem considered here is to solve sparse systems of nonlinear equations. A system is co...
We consider a class of constrained optimization problems where the objective function is a sum of a ...
Sparse optimization has seen an evolutionary advance in the past decade with extensive applications ...
Hard-thresholding-based algorithms have seen various advantages for sparse optimization in controlli...
This paper describes implementations of eight algorithms of Newton and quasi-Newton type for solving...
Nonlinear programming problems with equality constraints and bound constraints on the variables are ...
Signal models where non-negative vector data are represented by a sparse linear combination of non-n...
In this paper we introduce a new exact augmented Lagrangian function for the solution ofgeneral non...
The main purpose of this work is to associate a wide class of Lagrangian functions with a nonconvex,...
The spectral projected gradient method (SPG) is an algorithm for large-scale bound-constrained optim...
In this paper we propose a primal-dual algorithm for the solution of general nonlinear programming p...
Abstract. We describe an enhanced version of the primal-dual interior point algorithm in Lasdon, Plu...
This paper establishes a theory framework of a class of nonlinear Lagrangians for solving nonlinear ...
Over the past decades, Linear Programming (LP) has been widely used in different areas and considere...
We present a sparse Gauss-Newton solver for accelerated sensitivity analysis with applications to a ...
The basic problem considered here is to solve sparse systems of nonlinear equations. A system is co...
We consider a class of constrained optimization problems where the objective function is a sum of a ...
Sparse optimization has seen an evolutionary advance in the past decade with extensive applications ...
Hard-thresholding-based algorithms have seen various advantages for sparse optimization in controlli...
This paper describes implementations of eight algorithms of Newton and quasi-Newton type for solving...
Nonlinear programming problems with equality constraints and bound constraints on the variables are ...
Signal models where non-negative vector data are represented by a sparse linear combination of non-n...
In this paper we introduce a new exact augmented Lagrangian function for the solution ofgeneral non...
The main purpose of this work is to associate a wide class of Lagrangian functions with a nonconvex,...
The spectral projected gradient method (SPG) is an algorithm for large-scale bound-constrained optim...