National Natural Science Foundation of China (No.61165002);Natural Science Foundation of Gansu Province of China (No.1010RJZA019);Research Foundation of Northwest Normal University (No.NWNU-LKQN-10-3)
LIN Xiang-hong, LI Zhi-qiang, WEI Wei-yi. A Computational Framework for Indirect Encoding Methods of Evolutionary Neural Networks[J]. Acta Electronica Sinica, 2013, 41(5): 852-858.
DOI:
LIN Xiang-hong, LI Zhi-qiang, WEI Wei-yi. A Computational Framework for Indirect Encoding Methods of Evolutionary Neural Networks[J]. Acta Electronica Sinica, 2013, 41(5): 852-858. DOI: 10.3969/j.issn.0372-2112.2013.05.004.
A Computational Framework for Indirect Encoding Methods of Evolutionary Neural Networks
According to the difficulties in the evolving large scale neural networks using the traditional direct encoding methods
many researchers are proposing the novel indirect encoding methods for evolutionary neural networks.That is
a network structure that repeats many times can be represented by a single set of genes that is reused in mapping from genotype to phenotype
and such genetic reuse allows searching the large scale neural networks through a lower dimensional genotypic space.In this paper
we introduce a general computational framework for the indirect encoding methods of evolutionary neural networks through the study of existed methods
in which every evolutionary process of neural networks is divided into three stages:development
learning and evolution.Additionally
we analyze the advantages and disadvantages for the different indirect encoding methods from two aspects of the computational framework:genome evolution and neural network development.