Comparing Logic Programming in Radial Basis Function Neural Network (RBFNN) and Hopfield Neural Network
Journal: International Journal of Computational and Electronic Aspects in Engineering (Vol.1, No. 1)Publication Date: 2014-12-31
Authors : Mamman Mamuda; Saratha Sathasivam;
Page : 13-19
Keywords : Radial basis function neural network; Hopfield network; Logic programming;
Abstract
Neural network is a black box that clearly learns the internal relations of unknown systems. Neural-symbolic systems are based on both logic programming and artificial neural networks. Radial basis function neural network (RBFNN) and Hopfield neural network are the two well-known and commonly used types of feed forward and feedback networks. This study gives an overview of how logic programming are been carried out on both networks as well as the comparison of doing logic programming on both radial basis neural network and Hopfield neural network.
Other Latest Articles
- Comparative Study of Euclidean and City Block Distances in Fuzzy C-Means Clustering Algorithm
- Enhancing Reversible Data Hiding Technique in Encrypted Images
- Design and Implementation of Equiripple FIR High Pass Filter on FPGA
- Role of Ayurvedic Treatments - Ksharakarma (Caustic Cautery) and Jalukavacharana (Hirudotherapy) in the management of Necrotising Fascitis - A case Study
- In Vitro Anti-Oxidant Study of Pure Mattifying Face Cream Using HEPG2 Cell Line
Last modified: 2016-02-29 13:42:59