Multilayer Perceptron New Method for Selecting the Architecture Based on the Choice of Different Activation Functions

H. Ramchoun, M. J. Idrissi, Y. Ghanou, M. Ettaouil
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引用次数: 2

Abstract

Multilayer perceptron has a large amount of classifications and regression applications in many fields: pattern recognition, voice, and classification problems. But the architecture choice in particular, the activation function type used for each neuron has a great impact on the convergence and performance. In the present article, the authors introduce a new approach to optimize the selection of network architecture, weights, and activation functions. To solve the obtained model the authors use a genetic algorithm and train the network with a back-propagation method. The numerical results show the effectiveness of the approach shown in this article, and the advantages of the new model compared to the existing previous model in the literature.
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基于不同激活函数选择的多层感知机结构选择新方法
多层感知器在模式识别、语音、分类等领域有大量的分类和回归应用。但是结构的选择,特别是每个神经元所使用的激活函数类型对收敛性和性能有很大的影响。在本文中,作者介绍了一种优化网络结构、权重和激活函数选择的新方法。为了求解得到的模型,作者采用遗传算法,并采用反向传播方法对网络进行训练。数值结果表明了本文方法的有效性,以及新模型与文献中已有模型相比的优势。
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