在多层神经网络中改进泛化和解释的自编码器和信息增强

R. Kamimura
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引用次数: 1

摘要

本文旨在提出一种新的多层神经网络学习方法来解决信息消失问题。信息消失问题是指多层神经网络在经过许多隐藏层后,不但容易丢失输入信息,而且容易丢失错误信息。为了克服这个问题,新方法试图通过增加输入的数量,产生复合输入变量,尽可能多地捕获输入中的信息。将该方法应用于对称数据集和葡萄酒数据集。对于对称数据集,新方法可以捕捉输入数据集的对称属性,具有更好的泛化性能。对于葡萄酒数据集,新方法可以捕获套袋法和逻辑回归分析法检测到的综合特征,具有更好的泛化性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autoeoncoders and Information Augmentation for Improved Generalization and Interpretation in Multi-layered Neural Networks
The present paper aims to propose a new type of learning method for multi-layered neural network to solve the vanishing information problem. The vanishing information problem means that multi-layered neural networks tend to lose their error information as well as input information by going through many hidden layers. To overcome this problem, the new method tries to capture information in inputs as much as possible by increasing the number of inputs, producing composite input variables. The new method was applied to the symmetric data set and wine data sets. For the symmetric data set, the new method could capture the symmetric property of input data set with better generalization performance. For the wine data set, the new method could capture combined characteristics detected by the bagging method and logistic regression analysis with better generalization performance.
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