COMPARING THE PERFORMANCE OF PREDICTIVE MODELS CONSTRUCTED USING THE TECHNIQUES OF FEED-FORWORD AND GENERALIZED REGRESSION NEURAL NETWORKS
Journal: International Journal of Computer Systems & Software Engineering (IJSECS) (Vol.2, No. 20)Publication Date: 2016-02-01
Authors : Adeleke Raheem Ajiboye; Ruzaini Abdullah-Arshah; Hongwu Qin; Jamila Abdul-Hadi;
Page : 66-73
Keywords : Feed-forward network; generalized regression; machine learning; prediction;
Abstract
Artificial Neural Network (ANNs) is an efficient machine learningmethod that can be used to fits model from data for prediction purposes.Itis capable of modelling the class prediction as a nonlinear combination of the inputs. However, a number of factors may affect the accuracy of the model created using this approach. The choice of network type and how the network is optimally configured plays important role in the performance of a predictive model created using neural network techniques.This paper compares the accuracy of two typical neural network techniquesused forcreating apredictive model. The techniques are feed-forward neural network and the generalized regression networks. The model created using both techniquesare evaluated for correctness.The resulting outputs show that, the Generalized Regression Neural Network (GRNN) consistently produces a more accurate result. Findings further show that, the fitting of the network predictive model using the technique of Feed-forward Neural Network (FNN) records error value of 1.086 higherthan the generalized regression network.
Other Latest Articles
- DATA SECURITY ISSUES IN CLOUD COMPUTING: REVIEW
- ANALYSIS OF PARAMETERIZATION VALUE REDUCTION OF SOFT SETS AND ITS ALGORITHM
- AFRICAN BUFFALO OPTIMIZATION
- A SURVEY OF MEDICAL IMAGE PROCESSING TOOLS
- A PROPOSED FRAMEWORK TO CONTROL RUMOUR PROPAGATION ON TWITTER FOR CRITICAL NATIONAL INFORMATION INFRASTRUCTURE (CNII) ORGANISATIONS
Last modified: 2016-04-18 15:03:58