AppliedMath (Sep 2024)

Train Neural Networks with a Hybrid Method That Incorporates a Novel Simulated Annealing Procedure

  • Ioannis G. Tsoulos,
  • Vasileios Charilogis,
  • Dimitrios Tsalikakis

DOI
https://doi.org/10.3390/appliedmath4030061
Journal volume & issue
Vol. 4, no. 3
pp. 1143 – 1161

Abstract

Read online

In this paper, an innovative hybrid technique is proposed for the efficient training of artificial neural networks, which are used both in class learning problems and in data fitting problems. This hybrid technique combines the well-tested technique of Genetic Algorithms with an innovative variant of Simulated Annealing, in order to achieve high learning rates for the neural networks. This variant was applied periodically to randomly selected chromosomes from the population of the Genetic Algorithm in order to reduce the training error associated with these chromosomes. The proposed method was tested on a wide series of classification and data fitting problems from the relevant literature and the results were compared against other methods. The comparison with other neural network training techniques as well as the statistical comparison revealed that the proposed method is significantly superior, as it managed to significantly reduce the neural network training error in the majority of the used datasets.

Keywords