Silva and Almeida's algorithm improves on the existing backpropagation algorithm by introducing individual, adaptive learning-rates for each weight. The value for the new learning rate is computed as follows:
I read that the constants
d are set to be
u > 1 and
d < 1. Those constraints are rather broad, so are there any general guidelines for setting these values or do I have to figure it out by experimentation for my specific problem?