This paper serves as a tutorial on the use of neural networks for solving combinatorial optimization problems. It reviews the two main classes of neural network models : the gradient-based neural networks such as the Hopfield network, and the deformable template approaches such as the elastic net method and self organizing maps. In each class, the original model is presented, its limitations discussed, and subsequent developments and extensions are reviewed. Particular emphasis is placed on stochastic and chaotic variations on the neural network models designed to improve the optimization performance. Finally, the performance of these neural network models is compared and discussed relative to other heuristic approaches
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
A brief review is given for the use of feed-back artificial neural networks (ANN) to obtain good app...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
After more than a decade of research, there now exist several neural-network techniques for solving ...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
Neural networks can be successfully applied to solving certain types of combinatorial optimization p...
Neural network models for combinatorial optimization: A survey of deterministic, stochastic and chao...
This thesis discusses combinatorial optimization problems, its characteristics and solving methods. ...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
Neural Combinatorial Optimization attempts to learn good heuristics for solving a set of problems us...
We review the approaches for solving combinatorial optimization problems by chaotic dynamics. We men...
A multiscale method is described in the context of binary Hopfield--type neural networks. The approp...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
A brief review is given for the use of feed-back artificial neural networks (ANN) to obtain good app...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
After more than a decade of research, there now exist several neural-network techniques for solving ...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
Neural networks can be successfully applied to solving certain types of combinatorial optimization p...
Neural network models for combinatorial optimization: A survey of deterministic, stochastic and chao...
This thesis discusses combinatorial optimization problems, its characteristics and solving methods. ...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
Neural Combinatorial Optimization attempts to learn good heuristics for solving a set of problems us...
We review the approaches for solving combinatorial optimization problems by chaotic dynamics. We men...
A multiscale method is described in the context of binary Hopfield--type neural networks. The approp...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
A brief review is given for the use of feed-back artificial neural networks (ANN) to obtain good app...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...