Neural networks can be successfully applied to solving certain types of combinatorial optimization problems. In this paper several neural approaches to solving constrained optimization problems are presented and their properties discussed. The main goal of the paper is to present various improvements to the wellknown Hopfield models which are intensively used in combinatorial optimization domain. These improvements include deterministic modifications (binary Hopfield model with negative self-feedback connections and Maximum Neural Network model), stochastic modifications (Gaussian Machine), chaotic Hopfield-based models (Chaotic Neural Network and Transiently Chaotic Neural Network), hybrid approaches (Dual-mode Dynamic Neural Network and H...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Combinatorial optimization problems can be solved with the Hopfield Neural Network. If we choose con...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
After more than a decade of research, there now exist several neural-network techniques for solving ...
This paper serves as a tutorial on the use of neural networks for solving combinatorial optimization...
A neural network model for solving the N-Queens problem is presented in this paper. More specificall...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
A model of neurons with CHN (Continuous Hysteresis Neurons) for the Hopfield neural networks is stud...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
Abstract: A new neural network based optimization algorithm is proposed.The presented model is a dis...
Abstract: Multi-modal optimisation problems are characterised by the presence of either local sub-op...
We review the approaches for solving combinatorial optimization problems by chaotic dynamics. We men...
This thesis discusses combinatorial optimization problems, its characteristics and solving methods. ...
Neural networks are dynamic systems consisting of highly interconnected and parallel nonlinear proce...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Combinatorial optimization problems can be solved with the Hopfield Neural Network. If we choose con...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
After more than a decade of research, there now exist several neural-network techniques for solving ...
This paper serves as a tutorial on the use of neural networks for solving combinatorial optimization...
A neural network model for solving the N-Queens problem is presented in this paper. More specificall...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
A model of neurons with CHN (Continuous Hysteresis Neurons) for the Hopfield neural networks is stud...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
Abstract: A new neural network based optimization algorithm is proposed.The presented model is a dis...
Abstract: Multi-modal optimisation problems are characterised by the presence of either local sub-op...
We review the approaches for solving combinatorial optimization problems by chaotic dynamics. We men...
This thesis discusses combinatorial optimization problems, its characteristics and solving methods. ...
Neural networks are dynamic systems consisting of highly interconnected and parallel nonlinear proce...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Combinatorial optimization problems can be solved with the Hopfield Neural Network. If we choose con...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...