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Informative discriminator for domain adaptation

机译:域适应的信息鉴别者

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摘要

In this paper, we consider the problem of domain adaptation for multi-class classification, where we are provided a labeled set of examples in a source dataset and target dataset with no supervision. We tackle the mode collapse problem in adapting the classifier across domains. In this setting, we propose an adversarial learning-based approach using an informative discriminator. Our observation relies on the analysis that shows if the discriminator has access to all the information available, including the class structure present in the source dataset, then it can guide the transformation of features of the target set of classes to a more structured adapted space. Further, by training the informative discriminator using the more robust source samples, we are able to obtain better domain invariant features. Using this formulation, we achieve state-of-the-art results for the standard evaluation on benchmark datasets. We also provide detailed analysis, which shows that using all the labeled information results in an improved domain adaptation. (c) 2021 Elsevier B.V. All rights reserved.
机译:在本文中,我们考虑了多级分类的域适应问题,其中我们在源数据集和目标数据集中提供了一个标记为的示例,而没有监督。我们解决了在跨域调整分类器时的模式崩溃问题。在这个环境中,我们提出了使用信息鉴别者的基于对抗基于学习的方法。我们的观察依赖于分析,示出了鉴别器是否可以访问可用的所有信息,包括源数据集中存在的类结构,然后它可以指导目标类别集的功能转换为更具结构化的适应空间。此外,通过使用更强大的源样本培训信息鉴别器,我们能够获得更好的域不变功能。使用此配方,我们实现了最先进的结果,用于基准数据集的标准评估。我们还提供详细的分析,这表明使用所有标记的信息导致改进的域适应。 (c)2021 elestvier b.v.保留所有权利。

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