DocumentCode
2632037
Title
Optimum binary codification for genetic design of artificial neural networks
Author
Barrios, Dolores ; Manrique, Daniel ; Porras, Jaime ; Ríos, Juan
Author_Institution
Fac. de Inf., Univ. Politecnica de Madrid, Spain
Volume
2
fYear
2000
fDate
2000
Firstpage
844
Abstract
This paper describes a new scheme of binary codification of artificial neural networks designed to be used for generating automatically neural networks using genetic algorithms. Instead of using direct mapping of chromosomes in network connectivities, this particular codification abstracts genetic encoding so that it does not reference the artificial indexing of network nodes; thus this codification employs shorter chromosome length while avoids illegal individuals but does not exclude any legal neural network. With this purpose, a particular internal operation, called superimposition, has been designed in the set of artificial neural networks that allows building complex neural nets from minimum useful structures while it preserves the important feature that similar neural networks only differ in one bit, which is very desirable when using genetic algorithms. Experimental results are reported showing that this encoding scheme exhibits scaling properties when encoding large networks while the decoding process is very simple
Keywords
genetic algorithms; neural nets; artificial neural networks; chromosome length; decoding; experimental results; genetic algorithms; genetic design; optimum binary codification; scaling properties; superimposition; Abstracts; Algorithm design and analysis; Artificial neural networks; Biological cells; Chromosome mapping; Encoding; Genetic algorithms; Indexing; Law; Legal factors;
fLanguage
English
Publisher
ieee
Conference_Titel
Knowledge-Based Intelligent Engineering Systems and Allied Technologies, 2000. Proceedings. Fourth International Conference on
Conference_Location
Brighton
Print_ISBN
0-7803-6400-7
Type
conf
DOI
10.1109/KES.2000.884178
Filename
884178
Link To Document