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Adversarially Constrained Interpolation for Unsupervised Domain Adaptation

机译:无监督域适应的离前内结构间隔

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We address the problem of unsupervised domain adaptation (UDA) which aims at adapting models trained on a labeled domain to a completely unlabeled domain. One way to achieve this goal is to learn a domain-invariant representation. However, this approach is subject to two challenges: samples from two domains are insufficient to guarantee domain-invariance at most part of the latent space, and neighboring samples from the target domain may not belong to the same class on the low-dimensional manifold. To mitigate these shortcomings, we propose two strategies. First, we incorporate a domain mixup strategy in domain adversarial learning model by linearly interpolating between the source and target domain samples. This allows the latent space to be continuous and yields an improvement of the domain matching. Second, the domain discriminator is regularized via judging the relative difference between both domains for the input mixup features, which speeds up the domain matching. Experiment results show that our proposed model achieves a superior performance on different tasks under various domain shifts and data complexity.
机译:我们解决了无监督的域适应(UDA)的问题,该问题旨在调整在标记域上培训的模型到完全未标记的域。实现这一目标的一种方法是学习域不变的表示。然而,这种方法受到两个挑战:来自两个域的样本不足以保证在潜在空间的大部分大部分的域 - 不变性,并且来自目标域的相邻样本可能不属于低维歧管上的相同类别。为了减轻这些缺点,我们提出了两种策略。首先,我们通过在源域样本和目标域样本之间线性插值来纳入域对抗性学习模型中的域混合策略。这允许潜在的空间是连续的并且产生域匹配的改进。其次,通过判断输入混合功能的两个域之间的相对差异来规范域鉴别器,这加速了域匹配。实验结果表明,我们所提出的模型在各种域移位和数据复杂性下实现了不同任务的卓越性能。

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