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Supervised Representation Learning: Transfer Learning with Deep Autoencoders

机译:监督代表学习:与深度自动化器转移学习

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Transfer learning has attracted a lot of attention in the past decade. One crucial research issue in transfer learning is how to find a good representation for instances of different domains such that the divergence between domains can be reduced with the new representation. Recently, deep learning has been proposed to learn more robust or higher-level features for transfer learning. However, to the best of our knowledge, most of the previous approaches neither minimize the difference between domains explicitly nor encode label information in learning the representation. In this paper, we propose a supervised representation learning method based on deep autoencoders for transfer learning. The proposed deep autoencoder consists of two encoding layers: an embedding layer and a label encoding layer. In the embedding layer, the distance in distributions of the embedded instances between the source and target domains is minimized in terms of KL-Divergence. In the label encoding layer, label information of the source domain is encoded using a softmax regression model. Extensive experiments conducted on three real-world image datasets demonstrate the effectiveness of our proposed method compared with several state-of-the-art baseline methods.
机译:过去十年来,转移学习引起了很多关注。转让学习中的一个重要研究问题是如何找到不同域的实例的良好代表,使得域之间的分歧可以随着新的表示来减少。最近,已经提出了深入学习,以了解转移学习的更强大或更高级别的功能。然而,据我们所知,最先前的大多数方法都不明确地最小化域之间的差异,而不是在学习表示时编码标签信息。本文提出了一种基于深度自动化器进行转移学习的监督表示学习方法。所提出的深度自动沉积器由两个编码层组成:嵌入层和标签编码层。在嵌入层中,在源和靶域之间的嵌入式实例的分布距离在KL分歧方面最小化。在标签编码层中,使用SoftMax回归模型对源域的标签信息进行编码。在三个现实世界图像数据集上进行的广泛实验证明了我们所提出的方法的有效性与多种最先进的基线方法相比。

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