半监督对抗性判别域自适应。

Thai-Vu Nguyen, Anh Nguyen, Nghia Le, Bac Le
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引用次数: 2

摘要

领域自适应是在各种数据集上训练强大的深度神经网络的一种潜在方法。更准确地说,领域自适应方法在训练数据上训练模型,并在完全独立的数据集上测试该模型。基于对抗性的自适应方法在其他领域自适应方法中变得流行起来。基于GAN的思想,基于对抗性的领域自适应试图在对抗性学习过程中最小化训练和测试数据集之间的分布。我们观察到,半监督学习方法可以与基于对抗性的方法相结合来解决领域自适应问题。在本文中,我们提出了一种改进的对抗性域自适应方法,称为半监督对抗性判别域自适应(SADDA),它可以优于其他先前的域自适应方法。我们还证明了SADDA具有广泛的应用,并说明了我们的方法在图像分类和情感分类问题上的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Semi-supervised adversarial discriminative domain adaptation.

Domain adaptation is a potential method to train a powerful deep neural network across various datasets. More precisely, domain adaptation methods train the model on training data and test that model on a completely separate dataset. The adversarial-based adaptation method became popular among other domain adaptation methods. Relying on the idea of GAN, the adversarial-based domain adaptation tries to minimize the distribution between the training and testing dataset based on the adversarial learning process. We observe that the semi-supervised learning approach can combine with the adversarial-based method to solve the domain adaptation problem. In this paper, we propose an improved adversarial domain adaptation method called Semi-Supervised Adversarial Discriminative Domain Adaptation (SADDA), which can outperform other prior domain adaptation methods. We also show that SADDA has a wide range of applications and illustrate the promise of our method for image classification and sentiment classification problems.

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