Home /Research /Evolutionary Construction of Block-Based Neural Networks in Consideration of Failure
LEARNING

Evolutionary Construction of Block-Based Neural Networks in Consideration of Failure

Masahito Takamori, Seiichi Koakutsu, Tomoki Hamagami, Hironori Hirata

Year
2004
Citations
4
Access
Open access

Abstract

In this paper we propose a modified gene coding and an evolutionary construction in consideration of failure in evolutionary construction of Block-Based Neural Networks. In the modified gene coding, we arrange the genes of weights on a chromosome in consideration of the position relation of the genes of weight and structure. By the modified gene coding, the efficiency of search by crossover is increased. Thereby, it is thought that improvement of the convergence rate of construction and shortening of construction time can be performed. In the evolutionary construction in consideration of failure, the structure which is adapted for failure is built in the state where failure occured. Thereby, it is thought that BBNN can be reconstructed in a short time at the time of failure. To evaluate the proposed method, we apply it to pattern classification and autonomous mobile robot control problems. The computational experiments indicate that the proposed method can improve convergence rate of construction and shorten of construction and reconstruction time.

Keywords

Coding (social sciences)Computer scienceCrossoverConvergence (economics)Artificial neural networkEvolutionary algorithmRelation (database)Rate of convergenceBlock (permutation group theory)Artificial intelligence

Related papers

Browse all LEARNING papers