编者:IEA和CEA的结合

Qiangfu Zhao
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引用次数: 8

摘要

研究了可分解为多个同构模块的神经网络的进化学习问题,提出了一种将个体进化算法(IEA)与协同进化算法(CEA)相结合的新算法。该算法分为两部分。第一部分是国际能源机构的修订版,包括四个基本业务:评价、删除、插入和培训。这一部分是用尽可能少的模块来构建系统。第二部分是CEA,该部分的目的是评估和复制良好的候选模块,用于构建系统。本文将该算法称为EditEr。在编辑器中,每个模块分配一个个体,并根据其对系统的贡献来定义个体的适应度;一个种群被分配给每一类个体,从每个种群中可以找到许多个体。实验结果表明了编辑器的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EditEr: a combination of IEA and CEA
This paper studies the evolutionary learning of neural networks that can be decomposed into many homogeneous modules, and proposes a new algorithm by combining the individual evolutionary algorithm (IEA) and the co-evolutionary algorithm (CEA). The proposed algorithm has two parts. The first part, a modified version of the IEA, consists of four basic operations: evaluation, deletion, insertion and training. This part is to construct the system using as less modules as possible. The second part is CEA, and the purpose of this part is to evaluate and reproduce good candidate modules for constructing the system. The algorithm is called EditEr in this paper. In the EditEr, an individual is assigned to each module, and the fitness of an individual is defined according to its contribution to the system; a population is assigned to each class of individuals, and many individuals are to be found from each population. Some experimental results are provided to show the efficiency of the EditEr.
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