Classification of Iris Data using Kernel Radial Basis Probabilistic Neural Network
Journal: Scientific Review (Vol.1, No. 4)Publication Date: 2015-09-15
Authors : Mohd. Syafarudy Abu; Lim Eng Aik;
Page : 74-78
Keywords : Kernel function; Radial Basis Probabilistic Neural Network; Iris Data; Classification.;
Abstract
Radial Basis Probabilistic Neural Network (RBPNN) has a broader generalized capability that been successfully applied to multiple fields. In this paper, the Euclidean distance of each data point in RBPNN is extended by calculating its kernel-induced distance instead of the conventional sum-of squares distance. The kernel function is a generalization of the distance metric that measures the distance between two data points as the data points are mapped into a high dimensional space. During the comparing of the four constructed classification models with Kernel RBPNN, Radial Basis Function networks, RBPNN and Back-Propagation networks as proposed, results showed that, model classification on Iris Data with Kernel RBPNN display an outstanding performance in this regard.
Other Latest Articles
- Assessment of Maternal Health Seeking Behavior and Service Utilization among Women of Reproductive Age in South- Eastern, Nigeria
- Sensory and Physical Changes of Green Cubiu Fruits (Solanum Sessiliflorum Dunal, Solanaceae) During the Post-Harvest Period at Ambient Atmosphere
- Characterization and Starch Properties of a Waxy Mutant in Japonica Rice Kitaake
- LANGUAGE IN MENTAL RETARDATION, SCHIZOPHRENIAAND HEARING- IMPAIRED (DEAFNESS)
- SURGICAL MANAGEMENT OF RESIDUAL CYST: A CASE REPORT
Last modified: 2018-11-05 16:41:02