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Using Unlabelled Data to Train a Multilayer Perceptron

机译:使用未标记的数据培训多层默认的

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This paper presents an approach to using both labelled and unlabelled data to train a multilayer perceptron. The unlabelled data are iteratively pre-processed by a perceptron being trained to obtain the soft class label estimates. It is demonstrated that substantial gains in classification performance may be achieved from the use of the approach when the labelled data do not represent adequately the entire class distributions. The experimental investigations performed have shown that the approach proposed may be successfully used to train neural networks for learning different classification problems.
机译:本文介绍了一种使用标记和未标记的数据来培训多层训练的方法。未破坏的数据被训练的训练训练以获得软级标签估计的迭代数据。据证明,当标记数据不代表整个类分布时,可以通过使用方法来实现分类性能的大量收益。所表演的实验研究表明,所提出的方法可以成功地用于训练神经网络以学习不同的分类问题。

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