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All-Transfer Learning for Deep Neural Networks and Its Application to Sepsis Classification

机译:深度神经网络的全转让学习及其在败血症分类中的应用

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In this article, we propose a transfer learning method for deep neural networks (DNNs). Deep learning has been widely used in many applications. However, applying deep learning is problematic when a large amount of training data are not available. One of the conventional methods for solving this problem is transfer learning for DNNs. In the field of image recognition, state-of-the-art transfer learning methods for DNNs re-use parameters trained on source domain data except for the output layer. However, this method may result in poor classification performance when the amount of target domain data is significantly small. To address this problem, we propose a method called All-Transfer Deep Learning, which enables the transfer of all parameters of a DNN. With this method, we can compute the relationship between the source and target labels by the source domain knowledge. We applied our method to actual two-dimensional electrophoresis image (TDEI) classification for determining if an individual suffers from sepsis; the first attempt to apply a classification approach to TDEIs for proteomics, which has attracted considerable attention as an extension beyond genomics. The results suggest that our proposed method outperforms conventional transfer learning methods for DNNs.
机译:在这篇文章中,我们提出了深层神经网络(DNNs)转移学习方法。深学习已被广​​泛应用于许多应用。然而,应用深度学习当大量的训练数据不可用是有问题的。其中一个解决这个问题的传统方法是DNNs迁移学习。在图像识别领域中,对于DNNs状态的最先进的传输学习方法重复使用训练源数据域,除了输出层参数。然而,这种方法可能会导致分类性能较差时目标域的数据量是小显著。为了解决这个问题,我们提出了一个名为All-转移深度学习方法,使一个DNN的所有参数的传递。通过这种方法,我们可以计算源域的知识源和目标标签之间的关系。我们应用我们的方法来实际二维电泳图像(TDEI)分类用于确定是否从败血症个体患有;第一次尝试应用分类方法TDEIs蛋白质组学,已经吸引了大量的关注,超越基因组学的扩展。结果表明,我们提出的方法优于用于DNNs常规转移的学习方法。

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