Weight adaptation stability of linear and higher-order neural units for prediction applications
Resumen
This paper is focused on weight adaptation stability analysis of static and dynamic neural units for
prediction applications. The aim of this paper is to provide verifiable conditions in which the weight
system is stable during sample-by-sample adaptation. The paper presents a novel approach toward stability
of linear and higher-order neural units. A study of utilization of linear and higher-order neural units with
the foundations on stability of the gradient descent algorithm for static and dynamic models is addressed.
Colecciones
- Capítulo en libro [232]