Abstract- This paper presents the learning of neural network parameters using a real-coded genetic algorithm (RCGA) with proposed crossover and mutation. They are called the average-bound crossover (AveBXover) and wavelet mutation (WM). By introducing the proposed genetic operations, both the solution quality and stability are better than the RCGA with conventional genetic operations. A suite of benchmark test functions are used to evaluate the performance of the proposed algorithm. An application example on an associative memory neural network is used to show the learning performance brought by the proposed RCGA. I. INTRODUCrION Learning or training is one of the important issues of neural networks. The learning process aims to find a se
Genetic algorithms and genetic programming are optimization methods in which potential solutions evo...
Gradient descent techniques such as back propagation have been used effectively to train neural netw...
This paper presents a novel neural network with a variable structure, which is trained by a real-cod...
Author name used in this publication: F. H. F. Leung"Centre for Multimedia Signal Processing, Depart...
This paper presents a real-coded genetic algorithm (RCGA) with new genetic operations (crossover and...
xxxiii, 261 leaves : ill. ; 31 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 LingThis thesis...
The use of Recurrent Neural Networks is not as extensive as Feedforward Neural Networks. Training al...
This article aims at studying the behavior of different types of crossover operators in the performa...
This paper presents a neural network with variable parameters. These variable parameters adapt to th...
In this paper a new crossover operator called the double distribution crossover (DDX) is proposed. T...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
This article aims at studying the behavior of different types of crossover operators in the performa...
© 2015 IEEE. In this paper, a novel approach is proposed to improve the classification performance o...
This paper presents the tuning of the structure and parameters of a neural network using an improved...
This paper presents an input-dependent neural network (IDNN) with variable parameters. The parameter...
Genetic algorithms and genetic programming are optimization methods in which potential solutions evo...
Gradient descent techniques such as back propagation have been used effectively to train neural netw...
This paper presents a novel neural network with a variable structure, which is trained by a real-cod...
Author name used in this publication: F. H. F. Leung"Centre for Multimedia Signal Processing, Depart...
This paper presents a real-coded genetic algorithm (RCGA) with new genetic operations (crossover and...
xxxiii, 261 leaves : ill. ; 31 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 LingThis thesis...
The use of Recurrent Neural Networks is not as extensive as Feedforward Neural Networks. Training al...
This article aims at studying the behavior of different types of crossover operators in the performa...
This paper presents a neural network with variable parameters. These variable parameters adapt to th...
In this paper a new crossover operator called the double distribution crossover (DDX) is proposed. T...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
This article aims at studying the behavior of different types of crossover operators in the performa...
© 2015 IEEE. In this paper, a novel approach is proposed to improve the classification performance o...
This paper presents the tuning of the structure and parameters of a neural network using an improved...
This paper presents an input-dependent neural network (IDNN) with variable parameters. The parameter...
Genetic algorithms and genetic programming are optimization methods in which potential solutions evo...
Gradient descent techniques such as back propagation have been used effectively to train neural netw...
This paper presents a novel neural network with a variable structure, which is trained by a real-cod...