Title :
Gap-Based Estimation: Choosing the Smoothing Parameters for Probabilistic and General Regression Neural Networks
Author :
Zhong, M. ; Coggeshall, D. ; Ghaneie, E. ; Pope, T. ; Rivera, M. ; Georgiopoulos, M. ; Anagnostopoulos, G.C. ; Mollaghasemi, M. ; Richie, S.
Author_Institution :
Central Florida Univ., Orlando
Abstract :
Probabilistic neural networks (PNN) and general regression neural networks (GRNN) represent the knowledge by a simple but interpretable model that approximates the optimal classifier/predictor in the sense of expected value of accuracy. This model requires an important preset smoothing parameter, which is usually chosen by cross-validation or clustering. In this paper, we demonstrate the difficulties of both these approaches, discuss the relationship between this parameter and some of the data statistics, and attempt to develop a fast approach to determine the optimal value of this parameter. Finally, through experimentation we show that our approach, referred to as a gap-based estimation approach, is superior to the compared approaches.
Keywords :
knowledge representation; neural nets; regression analysis; data statistics; gap-based estimation; general regression neural networks; knowledge representation; preset smoothing parameter; probabilistic neural networks; smoothing parameters; Computer science; Engineering management; Industrial engineering; Kernel; Linear discriminant analysis; Neural networks; Predictive models; Smoothing methods; Statistics; Training data;
Conference_Titel :
Neural Networks, 2006. IJCNN '06. International Joint Conference on
Conference_Location :
Vancouver, BC
Print_ISBN :
0-7803-9490-9
DOI :
10.1109/IJCNN.2006.246908