Titolo | Evolving complex neural networks |
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Tipo di pubblicazione | Articolo su Rivista peer-reviewed |
Anno di Pubblicazione | 2007 |
Autori | Annunziato, M., Bertini I., De Felice Matteo, and Pizzuti S. |
Rivista | Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) |
Volume | 4733 LNAI |
Paginazione | 194-205 |
ISSN | 03029743 |
Parole chiave | Artificial life, Biological systems, Complex networks, Evolutionary algorithms, Large scale systems, Neural networks, Topology |
Abstract | Complex networks like the scale-free model proposed by Barabasi-Albert are observed in many biological systems and the application of this topology to artificial neural network leads to interesting considerations. In this paper, we present a preliminary study on how to evolve neural networks with complex topologies. This approach is utilized in the problem of modeling a chemical process with the presence of unknown inputs (disturbance). The evolutionary algorithm we use considers an initial population of individuals with differents scale-free networks in the genotype and at the end of the algorithm we observe and analyze the topology of networks with the best performances. Experimentation on modeling a complex chemical process shows that performances of networks with complex topology are similar to the feed-forward ones but the analysis of the topology of the most performing networks leads to the conclusion that the distribution of input node information affects the network performance (modeling capability). © Springer-Verlag Berlin Heidelberg 2007. |
Note | cited By 3 |
URL | https://www.scopus.com/inward/record.uri?eid=2-s2.0-38149111865&partnerID=40&md5=9633a84b0b81c4213faf531362ea3665 |
Citation Key | Annunziato2007194 |