A m-partite graph is defined as a graph that consists of m nodes each of which contains a set of elements, and the arcs connecting elements from different nodes. Each element in this graph comprises its specific attributes such as cost and resources. The weighted values of arcs represent the dissimilarities of resources between elements from different nodes. The m-partite graph problem is defined as selecting exactly one representative from a set of elements for each node in such a way that the sum of both the costs of the selected elements and their dissimilarities is minimized. In order to solve such a problem, Hopfield neural networks based approach is adopted in this paper. The Liapunov function (energy function) of Hopfield neural netw...
In this thesis we consider an efficient cooling schedule for a mean field annealing (MFA) algorithm....
Abstract- Recently neural networks have been ploposed as new computational tools for solving constra...
The applicaion of artificial neural network technique and particularly the Hopfield neural ...
An m-partite graph is defined as a graph that consists of m nodes each of which contains a set of el...
We are interested in finding near-optimal solutions to hard optimization problems using Hopfield-typ...
In this paper, we propose a Hopfield neural network based algorithm for efficiently solving the mini...
An application of Genetic Algorithms (GAs) to evolve Hopfield type optimum neural network architectu...
Abstract: Multi-modal optimisation problems are characterised by the presence of either local sub-op...
The increasing utility of specialized circuits and growing applications of optimization call for the...
In recent decays, soft computing techniques such as genetic algorithm (GA) and artificial neural net...
Abstract A combined optimization of genetic algorithms with simulated annealing has been applied to ...
After more than a decade of research, there now exist several neural-network techniques for solving ...
The application of artificial neural network technique and particularly the Hopfield neural network ...
[[abstract]]The Hopfield neural network (HNN) is one major neural network (NN) for solving optimizat...
A multiscale method is described in the context of binary Hopfield--type neural networks. The approp...
In this thesis we consider an efficient cooling schedule for a mean field annealing (MFA) algorithm....
Abstract- Recently neural networks have been ploposed as new computational tools for solving constra...
The applicaion of artificial neural network technique and particularly the Hopfield neural ...
An m-partite graph is defined as a graph that consists of m nodes each of which contains a set of el...
We are interested in finding near-optimal solutions to hard optimization problems using Hopfield-typ...
In this paper, we propose a Hopfield neural network based algorithm for efficiently solving the mini...
An application of Genetic Algorithms (GAs) to evolve Hopfield type optimum neural network architectu...
Abstract: Multi-modal optimisation problems are characterised by the presence of either local sub-op...
The increasing utility of specialized circuits and growing applications of optimization call for the...
In recent decays, soft computing techniques such as genetic algorithm (GA) and artificial neural net...
Abstract A combined optimization of genetic algorithms with simulated annealing has been applied to ...
After more than a decade of research, there now exist several neural-network techniques for solving ...
The application of artificial neural network technique and particularly the Hopfield neural network ...
[[abstract]]The Hopfield neural network (HNN) is one major neural network (NN) for solving optimizat...
A multiscale method is described in the context of binary Hopfield--type neural networks. The approp...
In this thesis we consider an efficient cooling schedule for a mean field annealing (MFA) algorithm....
Abstract- Recently neural networks have been ploposed as new computational tools for solving constra...
The applicaion of artificial neural network technique and particularly the Hopfield neural ...