Title :
Self-Organizing Systems-A Review and Commentary
Author_Institution :
Aeronutronic Div., Ford Motor Co., Newport Beach, Calif.
Abstract :
The class of self-organizing systems represented by networks which learn to recognize patterns is reviewed from an historical standpoint, and some of the behavioral similarities between such nets and biological nervous systems are discussed. Examples and results of several experimental models for alphanumeric character recognition are presented. The network synthesis problem is then recast in terms of redundant information removal, multivariable curve-fitting and expansion in orthonormal functions. Recognition network structures and the learning process are described from these points of view. The potential component and behavioral advantages to be gained from sequential feedback networks are discussed briefly.
Keywords :
Biological system modeling; Character recognition; Computer networks; Curve fitting; Feedback; Helium; Machine learning; Nervous system; Network synthesis; Pattern recognition;
Journal_Title :
Proceedings of the IRE
DOI :
10.1109/JRPROC.1961.287776