Sciweavers

ECAL
1995
Springer

Evolving Artificial Neural Networks that Develop in Time

13 years 8 months ago
Evolving Artificial Neural Networks that Develop in Time
Although recently there has been an increasing interest in studing genetically-based development using Artificial Life models, the mapping of the genetic information into the phenotype is usually as an abstract process that takes place instantaneously, i.e. before the creature starts to interact with the external world and is tested for fitness. In this paper we show that the temporal dimension of development has important consequences. By analyzing the results of simulations with temporally developing neural netwoks we found that evolution, by favouring the reproduction of Os which are efficient at all epochs of their life, selects genotypes which dictate early maturation of functional neural structure but not of nonfunctional structure. In addition, we found that development in time forces evolution to be conservative with characters that mature in the first phases of development while it allows evolution to play more freely with characters that mature later in development. Finally,...
Stefano Nolfi, Domenico Parisi
Added 26 Aug 2010
Updated 26 Aug 2010
Type Conference
Year 1995
Where ECAL
Authors Stefano Nolfi, Domenico Parisi
Comments (0)