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A Minimal Neural Network Ensemble Construction Method: A Constructive Approach

机译:最小神经网络集成构建方法:一种构建方法

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This paper presents a neural network ensemble (NNE) construction method for classification problems. The proposed method automatically determines a minimal NNE architecture and thus called the Minimal Neural Network Ensemble Construction (MNNEC) method. To determine minimal architecture, it starts with a single neural network (NN) with a minimal number of hidden units. During training process, it adds additional NN(s) with cumulative number(s) of hidden units. In conventional methods, in contrast, the number of NNs for NNE and the number of hidden nodes for each NN should be predetermined. At the time of NN addition in MNNEC, the added NN specializes in the previously unsolved portion of the input space. Finally all the NNs are trained simultaneously to improve the generalization ability. Therefore, for easy problems when multiple NNs are not required and a single NN is sufficient, the MNNEC can generate a single NN with a minimal number of hidden units. The MNNEC has been tested extensively on several benchmark problems of machine learning and NNs. The results exhibit that the MNNEC is able to construct NNEs of much smaller size than conventional methods.
机译:本文提出了一种用于分类问题的神经网络集成(NNE)构造方法。所提出的方法自动确定最小的NNE体系结构,因此称为最小神经网络集成结构(MNNEC)方法。为了确定最小的体系结构,它从具有最少数量的隐藏单元的单个神经网络(NN)开始。在训练过程中,它会添加具有隐藏单元累计数量的其他NN。相反,在传统方法中,应预先确定用于NNE的NN数量和每个NN的隐藏节点数量。在MNNEC中添加NN时,添加的NN专门用于输入空间的先前未解决的部分。最后,所有神经网络被同时训练以提高泛化能力。因此,对于不需要多个NN且单个NN足够的简单问题,MNNEC可以生成具有最少隐藏单元数量的单个NN。 MNNEC已在机器学习和NN的几个基准问题上进行了广泛的测试。结果表明,MNNEC能够构建比传统方法小得多的NNE。

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