Title :
Constructive approximations for neural networks by sigmoidal functions
Author_Institution :
Dept. of Math., Lowell Univ., MA, USA
fDate :
10/1/1990 12:00:00 AM
Abstract :
A constructive algorithm for uniformly approximating real continuous mappings by linear combinations of bounded sigmoidal functions is given. G. Cybenko (1989) has demonstrated the existence of uniform approximations to any continuous f provided that σ is continuous; the proof is nonconstructive, relying on the Hahn-Branch theorem and the dual characterization of C(In ). Cybenko´s result is extended to include any bounded sigmoidal (even nonmeasurable ones). The approximating functions are explicitly constructed. The number of terms in the linear combination is minimal for first-order terms
Keywords :
function approximation; neural nets; Cybenko; Hahn-Branch theorem; constructive approximations; mappings; neural networks; sigmoidal functions; Frequency; Mathematics; Neural networks; Neurons; Pursuit algorithms; Visualization;
Journal_Title :
Proceedings of the IEEE