Abstract:
Artificial neural networks, which are inspired by the behavior of central nervous system
have the capability of finding good generalized solutions for many real world problems
due to their characteristics such as massively parallel, ability to learn and adapt to the
environment by altering the synaptic weights. However, despite of all the advantages of
artificial neural networks, determining the most appropriate architecture for the given
problem still remains as an unsolved problem. This paper presents a pruning method
based on the backpropagation algorithm to solve this problem. The pruning method is
inspired by the concepts of neuroplasticity and experimental results show that the
proposed method approaches the minimal architecture faster than the other existing
methods.
Citation:
Wagarachchi, M., & Karunananda, A. (2017). Optimization of Artificial Neural Network Architecture Using Neuroplasticity. International Journal of Artificial IntelligenceTM, 15(1), 112-125