Neural networks for predicting breeding values and genetic gains

Authors

  • Gabi Nunes Silva Federal University of Viçosa -; Dept. of Applied Statistics and Biometrics
  • Rafael Simões Tomaz Federal University of Viçosa; Dept. of General Biology
  • Isabela de Castro Sant'Anna Federal University of Viçosa; Dept. of General Biology
  • Moysés Nascimento Federal University of Viçosa -; Dept. of Applied Statistics and Biometrics
  • Leonardo Lopes Bhering Federal University of Viçosa; Dept. of General Biology
  • Cosme Damião Cruz Federal University of Viçosa; Dept. of General Biology

DOI:

https://doi.org/10.1590/0103-9016-2014-0057

Abstract

Analysis using Artificial Neural Networks has been described as an approach in the decision-making process that, although incipient, has been reported as presenting high potential for use in animal and plant breeding. In this study, we introduce the procedure of using the expanded data set for training the network. Wealso proposed using statistical parameters to estimate the breeding value of genotypes in simulated scenarios, in addition to the mean phenotypic value in a feed-forward back propagation multilayer perceptron network. After evaluating artificial neural network configurations, our results showed its superiority to estimates based on linear models, as well as its applicability in the genetic value prediction process. The results further indicated the good generalization performance of the neural network model in several additional validation experiments.

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Published

2014-12-01

Issue

Section

Genetics and Plant Breeding

How to Cite

Neural networks for predicting breeding values and genetic gains . (2014). Scientia Agricola, 71(6), 494-498. https://doi.org/10.1590/0103-9016-2014-0057