Hessian with Mini-Batches for Electrical Demand Prediction

Author:

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

Abstract

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.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

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