Genetic optimisation of control parameters of a neural network

B. Choi, K. Bluff
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引用次数: 14

Abstract

One of the shortcomings of artificial neural networks (ANNs) is the difficulty in predicting the best control parameters for a certain application. The number of combinations of parameters is very large. This makes it very inefficient and expensive to search manually by trial and error. Genetic algorithms (GAs) are an excellent and effective search technique suitable for this task. This paper describes an investigation into the use of GAs to automate the choice of parameters in both a standard backpropagation (SBP) and a fuzzy backpropagation (FBP) network for different applications.
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神经网络控制参数的遗传优化
人工神经网络(ann)的缺点之一是难以预测特定应用的最佳控制参数。参数组合的数量非常大。这使得通过尝试和错误手动搜索非常低效和昂贵。遗传算法(GAs)是一种适合于此任务的优秀而有效的搜索技术。本文研究了在标准反向传播(SBP)和模糊反向传播(FBP)网络中使用GAs自动选择参数的不同应用。
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