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Call the classification capability of network be further improved by using quadratic sigmoidal neurons?

机译:通过使用二次乙状神经元可以进一步提高网络的分类能力吗?

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In Ref. [4] by using constructive method, Chiang et al., proved that a three-layer neural network containing k + 1 single threshold quadratic sigmoidal hidden neurons and one multithreshold sigmoidal output neuron could learn arbitrary dichotomy defined on a training set of 4k patterns. In this paper the classification capability of the feed forward neural networks containing multiple or single threshold quadratic sigmoidal neurons in the hidden and output layer is evaluated. The degree of improvement on the classification capability of network by using quadratic sigmoidal neurons is analyzed. Published by Elsevier Science Ltd. [References: 7]
机译:在参考文献中[4]通过使用构造方法,Chiang等人证明了一个包含k + 1个单阈值二次乙状结肠隐藏神经元和一个多阈值乙状结肠输出神经元的三层神经网络可以学习在4k模式训练集上定义的任意二分法。在本文中,对隐藏和输出层中包含多个或单个阈值二次乙状神经元的前馈神经网络的分类能力进行了评估。分析了使用二次乙状神经元对网络分类能力的提高程度。由Elsevier Science Ltd.发布[参考:7]

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