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A new algorithm to design compact two-hidden-layer artificial neural networks.

机译:一种设计紧凑的两层人工神经网络的新算法。

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This paper describes the cascade neural network design algorithm (CNNDA), a new algorithm for designing compact, two-hidden-layer artificial neural networks (ANNs). This algorithm determines an ANN's architecture with connection weights automatically. The design strategy used in the CNNDA was intended to optimize both the generalization ability and the training time of ANNs. In order to improve the generalization ability, the CNDDA uses a combination of constructive and pruning algorithms and bounded fan-ins of the hidden nodes. A new training approach, by which the input weights of a hidden node are temporarily frozen when its output does not change much after a few successive training cycles, was used in the CNNDA for reducing the computational cost and the training time. The CNNDA was tested on several benchmarks including the cancer, diabetes and character-recognition problems in ANNs. The experimental results show that the CNNDA can produce compact ANNs with good generalization ability and short training time in comparison with other algorithms.
机译:本文介绍了级联神经网络设计算法(CNNDA),这是一种用于设计紧凑的两层人工神经网络(ANN)的新算法。该算法自动确定具有连接权重的ANN架构。 CNNDA中使用的设计策略旨在优化ANN的泛化能力和训练时间。为了提高泛化能力,CNDDA使用了构造和修剪算法以及隐藏节点的有界扇入的组合。在CNNDA中使用了一种新的训练方法,即当隐藏节点的输出在几个连续的训练周期后输出变化不大时,将冻结该结点的输入权重,以降低计算成本和训练时间。 CNNDA已在多个基准测试,包括ANN中的癌症,糖尿病和字符识别问题。实验结果表明,与其他算法相比,CNNDA能够生成具有良好泛化能力和较短训练时间的紧凑型人工神经网络。

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