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Re-weighted Adversarial Adaptation Network for Unsupervised Domain Adaptation

机译:无权域自适应的再加权对抗自适应网络

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Unsupervised Domain Adaptation (UDA) aims to transfer domain knowledge from existing well-defined tasks to new ones where labels are unavailable. In the real-world applications, as the domain (task) discrepancies are usually uncontrollable, it is significantly motivated to match the feature distributions even if the domain discrepancies are disparate. Additionally, as no label is available in the target domain, how to successfully adapt the classifier from the source to the target domain still remains an open question. In this paper, we propose the Re-weighted Adversarial Adaptation Network (RAAN) to reduce the feature distribution divergence and adapt the classifier when domain discrepancies are disparate. Specifically, to alleviate the need of common supports in matching the feature distribution, we choose to minimize optimal transport (OT) based Earth-Mover (EM) distance and reformulate it to a minimax objective function. Utilizing this, RAAN can be trained in an end-to-end and adversarial manner. To further adapt the classifier, we propose to match the label distribution and embed it into the adversarial training. Finally, after extensive evaluation of our method using UDA datasets of varying difficulty, RAAN achieved the state-of-the-art results and outperformed other methods by a large margin when the domain shifts are disparate.
机译:无监督域适应(UDA)旨在将域知识从现有定义明确的任务转移到标签不可用的新任务。在实际应用中,由于域(任务)差异通常是无法控制的,因此即使域差异完全不同,也会极大地激发人们匹配特征分布的动机。另外,由于目标域中没有可用的标签,因此如何成功地将分类器从源域适应到目标域仍然是一个悬而未决的问题。在本文中,我们提出了重新加权对抗适应网络(RAAN),以减少特征分布差异并在域差异完全不同时适应分类器。具体来说,为了减轻在匹配特征分布时需要通用支撑的需求,我们选择最小化基于最佳运输(OT)的地动(EM)距离,并将其重新构造为minimax目标函数。利用这一点,可以以端到端和对抗的方式训练RAAN。为了进一步适应分类器,我们建议匹配标签分布并将其嵌入对抗训练中。最终,在使用难度不同的UDA数据集对我们的方法进行了广泛评估之后,当域转移完全不同时,RAAN获得了最先进的结果,并且在很大程度上超越了其他方法。

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