The training of product neural networks using genetic algorithms is discussed. Two unusual neural network techniques are combined; product units are employed instead of the traditional summing units and genetic algorithms train the network rather than backpropagation. As an example, a neural netork is trained to calculate the optimum width of transistors in a CMOS switch. It is shown how local minima affect the performance of a genetic algorithm, and one method of overcoming this is presented
The terms phenotypic and genotypic learning refer to naturally inspired adaptive algo-rithms, based ...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
For many applications feedforward neural networks have proved to be a valuable tool. Although the ba...
We present a general and systematic method for neural network design based on the genetic algorithm....
Centre for Multimedia Signal Processing, Department of Electronic and Information Engineering2002-20...
In the neural network / genetic algorithm community, rather limited success in the training of neur...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
This paper studies several applications of genetic algorithms (GAs) within the neural networks field...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
This paper proposes an approach to the problem of adaptation of neuralnetworks (NN) to arbitrary tas...
This work deals with methods for finding optimal neural network architectures to learn par-ticular p...
Genetic algorithms (GA) are used to search the synaptic weight space of artificial neural systems (A...
Genetic programming has been successfully applied to evolve computer programs for solving a variety ...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
The terms phenotypic and genotypic learning refer to naturally inspired adaptive algo-rithms, based ...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
For many applications feedforward neural networks have proved to be a valuable tool. Although the ba...
We present a general and systematic method for neural network design based on the genetic algorithm....
Centre for Multimedia Signal Processing, Department of Electronic and Information Engineering2002-20...
In the neural network / genetic algorithm community, rather limited success in the training of neur...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
This paper studies several applications of genetic algorithms (GAs) within the neural networks field...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
This paper proposes an approach to the problem of adaptation of neuralnetworks (NN) to arbitrary tas...
This work deals with methods for finding optimal neural network architectures to learn par-ticular p...
Genetic algorithms (GA) are used to search the synaptic weight space of artificial neural systems (A...
Genetic programming has been successfully applied to evolve computer programs for solving a variety ...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
The terms phenotypic and genotypic learning refer to naturally inspired adaptive algo-rithms, based ...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
For many applications feedforward neural networks have proved to be a valuable tool. Although the ba...