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Semi-supervised Deep Learning Using Improved Unsupervised Discriminant Projection

机译:使用改进的无监督判别投影的半监督深度学习

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Deep learning demands a huge amount of well-labeled data to train the network parameters. How to use the least amount of labeled data to obtain the desired classification accuracy is of great practical significance, because for many real-world applications (such as medical diagnosis), it is difficult to obtain so many labeled samples. In this paper, modify the unsupervised discriminant projection algorithm from dimension reduction and apply it as a regularization term to propose a new semi-supervised deep learning algorithm, which is able to utilize both the local and nonlocal distribution of abundant unlabeled samples to improve classification performance. Experiments show that given dozens of labeled samples, the proposed algorithm can train a deep network to attain satisfactory classification results.
机译:深度学习需要大量标记良好的数据来训练网络参数。如何使用最少数量的标记数据来获得所需的分类精度具有重大的实际意义,因为对于许多实际应用(例如医学诊断)而言,很难获得这么多的标记样本。本文从维数约简的角度出发,对无监督的判别投影算法进行了修改,并将其作为正则化项,提出了一种新的半监督的深度学习算法,该算法可以利用大量未标记样本的局部和非局部分布来提高分类性能。 。实验表明,给定几十个带标签的样本,该算法可以训练一个深层网络以获得满意的分类结果。

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