Applied Sciences (Mar 2020)

Hessian with Mini-Batches for Electrical Demand Prediction

  • Israel Elias,
  • José de Jesús Rubio,
  • David Ricardo Cruz,
  • Genaro Ochoa,
  • Juan Francisco Novoa,
  • Dany Ivan Martinez,
  • Samantha Muñiz,
  • Ricardo Balcazar,
  • Enrique Garcia,
  • Cesar Felipe Juarez

DOI
https://doi.org/10.3390/app10062036
Journal volume & issue
Vol. 10, no. 6
p. 2036

Abstract

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The steepest descent method is frequently used for neural network tuning. Mini-batches are commonly used to get better tuning of the steepest descent in the neural network. Nevertheless, steepest descent with mini-batches could be delayed in reaching a minimum. The Hessian could be quicker than the steepest descent in reaching a minimum, and it is easier to achieve this goal by using the Hessian with mini-batches. In this article, the Hessian is combined with mini-batches for neural network tuning. The discussed algorithm is applied for electrical demand prediction.

Keywords