1 research outputs found
Online Tuning of Artificial Neural Networks Using a Model-Free-Based Control Algorithm -- A preliminary study
We explore the possibilities of using a model-free-based control law in order
to train artificial neural networks. In the supervised learning context, we
consider the problem of tuning the synaptic weights as a feedback control
tracking problem where the control algorithm adjusts the weights online
according to the input-output training data set of the neural network.
Simulation results illustrate very promising properties of our proposed
approach.Comment: 12 pages, 7 figure