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Combination of Neural Networks for Multi-label Document Classification

机译:神经网络的多标签文档分类

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This paper deals with multi-label classification of Czech documents using several combinations of neural networks. It is motivated by the assumption that different nets can keep some complementary information and that it should be useful to combine them. The main contribution of this paper consists in a comparison of several combination approaches to improve the results of the individual neural nets. We experimentally show that the results of all the combination approaches outperform the individual nets, however they are comparable. However, the best combination method is the supervised one which uses a feedforward neural net with sigmoid activation function.
机译:本文使用神经网络的几种组合处理捷克文档的多标签分类。其动机是基于这样的假设,即不同的网络可以保留一些补充信息,并且将它们组合起来应该是有用的。本文的主要贡献在于比较了几种改进单个神经网络结果的组合方法。我们通过实验表明,所有组合方法的结果均优于单个网络,但是它们具有可比性。但是,最好的组合方法是有监督的方法,该方法使用具有S型激活功能的前馈神经网络。

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