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Title of the item:

Using GA for evolving weights in neural networks

Title:
Using GA for evolving weights in neural networks
Authors:
Hameed, Wafaa Mustafa
Kanbar, Asan Baker
Subject:
genetic algorithm
neural network
crossover
mutation
algorytm genetyczny
sieć neuronowa
skrzyżowanie
mutacja
Publication date:
2019
Publisher:
Polskie Towarzystwo Promocji Wiedzy
Language:
English
Rights:
CC BY: Creative Commons Uznanie autorstwa 4.0
Source:
Applied Computer Science; 2019, 15, 3; 21-33
1895-3735
Data provider:
Biblioteka Nauki
Article
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This article aims at studying the behavior of different types of crossover operators in the performance of Genetic Algorithm. We have also studied the effects of the parameters and variables (crossover probability (Pc), mutation probability (Pm), population size (popsize) and number of generation (NG) for controlling the algorithm. This research accumulated most of the types of crossover operators these types are implemented on evolving weights of Neural Network problem. The article investigates the role of crossover in GAs with respect to this problem, by using a comparative study between the iteration results obtained from changing the parameters values (crossover probability, mutation rate, population size and number of generation). From the experimental results, the best parameters values for the Evolving Weights of XOR-NN problem are NG = 1000, popsize = 50, Pm = 0.001, Pc = 0.5 and the best operator is Line Recombination crossover.

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