Title :
Local Training for Radial Basis Function Networks: Towards Solving the Hidden Unit Problem
Author :
Holcomb, Tyler ; Morari, Manfred
Author_Institution :
Chemical Engineering 210-41, California Institute of Technology, Pasadena CA 91125
Abstract :
This work examines training methods for radial basis function networks (RBFNs). First, the theoretical and practical motivation for RBFNs is reviewed, as are two currently popular training methods. Next a new training method is developed using well known results from functional analysis. This method trains each kidden unit individually, and is thus called the local training method. The structure of the method allows analysis of individual hidden units; moreover a covariance-related quantity is defined that gives insight into how many hidden units to employ. Two examples illustrate the usefulness of the method. Lastly, an ad hoc method to further improve RBFN performance is demonstrated.
Keywords :
Chemical engineering; Chemical technology; Equations; Functional analysis; Gaussian processes; Green´s function methods; Least squares methods; Radial basis function networks; Sensor arrays; Training data;
Conference_Titel :
American Control Conference, 1991
Conference_Location :
Boston, MA, USA
Print_ISBN :
0-87942-565-2