A Gene-Regulated Nested Neural Network
Romi Rahmat1, Muhammad Pasha2, Mohammad Syukur3
and Rahmat Budiarto4
Abstract: Neural
networks have always been a popular approach for intelligent machine
development and knowledge discovery. Although, reports have featured successful
neural network implementations, problems still exists with this approach,
particularly its excessive training time. In this paper, we propose a Gene-Regulated
Nested Neural Network (GRNNN) model as an improvement to existing neural
network models to solve the excessive training time problem. We use a gene
regulatory training engine to control and distribute the genes that regulate
the proposed nested neural network. The proposed GRNNN is evaluated and
validated through experiments to classify accurately the 8 bit XOR parity
problem. Experimental results show that the proposed model does not require
excessive training time and meets the required objectives.
Keywords: Neural networks,
gene regulatory network, artificial intelligence, bio-inspired computing.
Received May 13, 2013; accepted July
21, 2013