Evolutionary Approaches for ANNs Design

A. Azzini, A. Tettamanzi
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引用次数: 6

Abstract

Artificial neural networks (ANNs) are computational models, loosely inspired by biological neural networks, consisting of interconnected groups of artificial neu-rons which process information using a connectionist approach.ANNs are widely applied to problems like pattern recognition, classification, and time series analysis. The success of an ANN application usually requires a high number of experiments. Moreover, several parameters of an ANN can affect the accuracy of solutions. A par-ticular type of evolving system, namely neuro-genetic systems, have become a very important research topic in ANN design. They make up the so-called Evolutionary Artificial Neural Networks (EANNs), i.e., biologically-inspired computational models that use evolutionary algorithms (EAs) in conjunction with ANNs.Evolutionary algorithms and state-of-the-art design of EANN were introduced first in the milestone survey by Xin Yao (1999), and, more recently, by Abraham (2004), by Cantu-Paz and Kamath (2005), and then by Castellani (2006).The aim of this article is to present the main evolu-tionary techniques used to optimize the ANN design, providing a description of the topics related to neural network design and corresponding issues, and then, some of the most recent developments of EANNs found in the literature. Finally a brief summary is given, with a few concluding remarks.
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人工神经网络设计的进化方法
人工神经网络(ann)是一种计算模型,松散地受到生物神经网络的启发,由相互连接的人工神经元组组成,这些人工神经元组使用连接主义方法处理信息。人工神经网络被广泛应用于模式识别、分类和时间序列分析等问题。人工神经网络应用的成功通常需要大量的实验。此外,人工神经网络的一些参数也会影响解的准确性。一种特殊类型的进化系统,即神经遗传系统,已经成为人工神经网络设计中一个非常重要的研究课题。它们构成了所谓的进化人工神经网络(eann),即生物启发的计算模型,将进化算法(ea)与人工神经网络结合使用。进化算法和最先进的EANN设计首先由Xin Yao(1999)在里程碑调查中介绍,最近由Abraham(2004)、Cantu-Paz和Kamath(2005)和Castellani(2006)介绍。本文的目的是介绍用于优化人工神经网络设计的主要进化技术,提供与神经网络设计相关的主题和相应问题的描述,然后,在文献中发现的一些人工神经网络的最新发展。最后,本文作了简要的总结,并作了一些总结。
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