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Simplified Information Maximization for Improving Generalization Performance in Multilayered Neural Networks

机译:简化信息最大化以提高多层神经网络的泛化性能

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摘要

A new type of information-theoretic method is proposed to improve prediction performance in supervised learning. The method has two main technical features. First, the complicated procedures used to increase information content are replaced by the direct use of hidden neuron outputs. Information is controlled by directly changing the outputs of the hidden neurons. In addition, to simultaneously increase information content and decrease errors between targets and outputs, the information acquisition and use phases are separated. In the information acquisition phase, the autoencoder tries to acquire as much information content on input patterns as possible. In the information use phase, information obtained in the acquisition phase is used to train supervised learning. The method is a simplified version of actual information maximization and directly deals with the outputs from neurons. The method was applied to the three data sets, namely, Iris, bankruptcy, and rebel participation data sets. Experimental results showed that the proposed simplified information acquisition method was effective in increasing the real information content. In addition, by using the information content, generalization performance was greatly improved.
机译:提出了一种新型的信息理论方法,以提高监督学习中的预测性能。该方法具有两个主要技术特征。首先,用于增加信息内容的复杂过程被直接使用隐藏的神经元输出所代替。通过直接更改隐藏神经元的输出来控制信息。另外,为了同时增加信息内容并减少目标和输出之间的错误,信息获取和使用阶段是分开的。在信息获取阶段,自动编码器尝试获取尽可能多的有关输入模式的信息内容。在信息使用阶段,在获取阶段获得的信息用于训练监督学习。该方法是实际信息最大化的简化版本,可以直接处理神经元的输出。该方法已应用于三个数据集,即虹膜,破产和叛军参与数据集。实验结果表明,所提出的简化信息获取方法可以有效地增加真实信息的内容。另外,通过使用信息内容,泛化性能大大提高。

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  • 来源
    《Mathematical Problems in Engineering》 |2016年第3期|3015087.1-3015087.17|共17页
  • 作者

    Kamimura Ryotaro;

  • 作者单位

    Tokai Univ, IT Educ Ctr, 1117 Kitakaname, Hiratsuka, Kanagawa 2591292, Japan|Tokai Univ, Sch Sci & Technol, 1117 Kitakaname, Hiratsuka, Kanagawa 2591292, Japan;

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