TITLE:
The Role and Place of Artificial Neural Network Architectures Structural Redundancy in the Input Data Prototypes and Generalization Development
AUTHORS:
Conrad Onésime Oboulhas Tsahat, Ngoulou-A-Ndzeli, Béranger Destin Ossibi
KEYWORDS:
Multilayer Neural Network, Multidimensional Nonlinear Interpolation, Generalization by Similarity, Artificial Intelligence, Prototype Development
JOURNAL NAME:
Journal of Computer and Communications,
Vol.12 No.7,
July
17,
2024
ABSTRACT: Neural Networks (NN) are the functional unit of Deep Learning and are known to mimic the behavior of the human brain to solve complex data-driven problems. Whenever we train our own neural networks, we need to take care of something called the generalization of the neural network. The performance of Artificial Neural Networks (ANN) mostly depends upon its generalization capability. In this paper, we propose an innovative approach to enhance the generalization capability of artificial neural networks (ANN) using structural redundancy. A novel perspective on handling input data prototypes and their impact on the development of generalization, which could improve to ANN architectures accuracy and reliability is described.