Linear variational inequality is a uniform approach for some important problems in optimization and equilibrium problems. In this paper, we give a neural-network model for solving asymmetric linear variational inequalities. The model is based on a simple projection and contraction method. Computer simulation is performed for linear programming (LP) and linear complementarity problems (LCP), The test results for LP problem demonstrate that our model converges significantly faster than the three existing neural-network models examined in a recent comparative study paper
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
Abstract—This paper presents a recurrent neural-network model for solving a special class of general...
In this paper, we present a neural network approach for solving nonlinear complementarity problems. ...
Abstract—Most existing neural networks for solving linear variational inequalities (LVIs) with the m...
In this paper, we propose efficient neural network models for solving a class of variational inequal...
Recently, projection neural network (PNN) was proposed for solving monotone variational inequalities...
We propose and analyze two classes of neural network models for solving linear programming (LP) prob...
Abstract—In recent years, a recurrent neural network called projection neural network was proposed f...
Abstract—There exist many recurrent neural networks for solving optimization-related problems. In th...
We investigate the qualitative properties of a recurrent neural network (RNN) for solving the genera...
International audienceMotivated by structures that appear in deep neural networks, we investigate no...
AbstractThis paper presents a neural network approach for solving convex programming problems with e...
We investigate the convergence properties of a projected neural network for solving inverse variatio...
This paper investigates the existence, uniqueness, and global exponential stability (GES) of the equ...
Abstract. The general projection neural network (GPNN) is a versa-tile recurrent neural network mode...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
Abstract—This paper presents a recurrent neural-network model for solving a special class of general...
In this paper, we present a neural network approach for solving nonlinear complementarity problems. ...
Abstract—Most existing neural networks for solving linear variational inequalities (LVIs) with the m...
In this paper, we propose efficient neural network models for solving a class of variational inequal...
Recently, projection neural network (PNN) was proposed for solving monotone variational inequalities...
We propose and analyze two classes of neural network models for solving linear programming (LP) prob...
Abstract—In recent years, a recurrent neural network called projection neural network was proposed f...
Abstract—There exist many recurrent neural networks for solving optimization-related problems. In th...
We investigate the qualitative properties of a recurrent neural network (RNN) for solving the genera...
International audienceMotivated by structures that appear in deep neural networks, we investigate no...
AbstractThis paper presents a neural network approach for solving convex programming problems with e...
We investigate the convergence properties of a projected neural network for solving inverse variatio...
This paper investigates the existence, uniqueness, and global exponential stability (GES) of the equ...
Abstract. The general projection neural network (GPNN) is a versa-tile recurrent neural network mode...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
Abstract—This paper presents a recurrent neural-network model for solving a special class of general...
In this paper, we present a neural network approach for solving nonlinear complementarity problems. ...