Title :
Improving ANN generalization using a priori knowledge to pre-structure ANNs
Author :
Lendaris, George G. ; Rest, Armin ; Misley, Thomas R.
Author_Institution :
Portland State Univ., OR, USA
Abstract :
This is a continuation of work reported by Lendaris at el. (1994) whose objective has been to develop a method that uses certain a priori information about a problem domain to pre-structure artificial neural networks (ANNs) into modules before training. The method is based on a general systems theory methodology, based on information-theoretic ideas, that generates structural information of the problem domain by analyzing I/O pairs from that domain. The notion of performance subset of an ANN structure is described. Extensive experiments on 5-input/1-output and 7-input/1-output Boolean mappings show that significantly improved generalization follows from successful pre-structuring. As the previous work already showed, such pre-structuring also yields improved training speed
Keywords :
Boolean functions; generalisation (artificial intelligence); information theory; learning (artificial intelligence); neural net architecture; system theory; Boolean mappings; general systems theory; generalization; information-theory; learning; modules; neural networks; prestructuring; Artificial neural networks; Boolean functions; Data analysis; Feedforward systems; GSM; Information analysis; Input variables; Physics;
Conference_Titel :
Neural Networks,1997., International Conference on
Conference_Location :
Houston, TX
Print_ISBN :
0-7803-4122-8
DOI :
10.1109/ICNN.1997.611673