Abstract
M.Ing. (Electrical And Electronic Engineering)
This dissertation describes the development of a system of Artificial Neural Networks
that enables the incremental training of feed forward neural networks using
supervised training algorithms such as back propagation.
It is argued that incremental learning is fundamental to the adaptive learning
behavior observed in human intelligence and constitutes an imperative step towards
artificial cognition.
The importance of developing incremental learning as a system of ANNs is stressed
before the complete system is presented. Details of the development and implementation
of the system is complemented by the description of two case studies.
In conclusion the role of the incremental learning system as basis for further
development of fundamental elements of cognition is projected.