Adversarial Transform Networks for Unsupervised Transfer Learning

Guanyu Cai, Yuqin Wang, Lianghua He, Mengchu Zhou
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引用次数: 1

Abstract

Transfer learning, especially unsupervised domain adaptation, is a crucial technology for sample-efficient learning. Recently, deep adversarial domain adaptation methods perform remarkably well in various tasks, which introduce a domain classifier to promote domain-invariant representation. However, previous methods either constrain the representative ability with an identical feature extractor for both domains or ignore the relationship between domains with separate extractors. In this paper, we propose a novel adversarial domain adaptation method named Adversarial Transform Network (ATN) to both enhance the representative ability and transfer general information between domains. Residual connections are used to share features in the bottom layers, which deliver transferrable features to boost generalization performance. Moreover, a regularizer is proposed to alleviate a vanishing gradient problem, thus stabilizing the optimization procedure. Extensive experiments are conducted to show that the proposed ATN is comparable with the methods of the state-of-the-art and effectively deals with the vanishing gradient problem.
无监督迁移学习的对抗变换网络
迁移学习,尤其是无监督域自适应,是样本高效学习的关键技术。近年来,深度对抗性领域自适应方法在各种任务中表现优异,该方法引入了领域分类器来促进领域不变表示。然而,以前的方法要么用相同的特征提取器约束两个领域的代表能力,要么用单独的提取器忽略领域之间的关系。本文提出了一种新的对抗域自适应方法——对抗变换网络(adversarial Transform Network, ATN),既增强了表征能力,又能在域间传递一般信息。残差连接用于底层特征共享,提供可转移的特征,提高泛化性能。此外,还提出了一个正则化器来缓解梯度消失问题,从而使优化过程趋于稳定。大量的实验表明,所提出的ATN与目前最先进的方法相当,并有效地处理了梯度消失问题。
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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