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Learning Target-Domain-Specific Classifier for Partial Domain Adaptation

机译:学习目标域的特定于部分域适配的分类器

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Unsupervised domain adaptation (UDA) aims at reducing the distribution discrepancy when transferring knowledge from a labeled source domain to an unlabeled target domain. Previous UDA methods assume that the source and target domains share an identical label space, which is unrealistic in practice since the label information of the target domain is agnostic. This article focuses on a more realistic UDA scenario, i.e., partial domain adaptation (PDA), where the target label space is subsumed to the source label space. In the PDA scenario, the source outliers that are absent in the target domain may be wrongly matched to the target domain (technically named negative transfer), leading to performance degradation of UDA methods. This article proposes a novel target-domain-specific classifier learning-based domain adaptation (TSCDA) method. TSCDA presents a soft-weighed maximum mean discrepancy criterion to partially align feature distributions and alleviate negative transfer. Also, it learns a target-specific classifier for the target domain with pseudolabels and multiple auxiliary classifiers to further address the classifier shift. A module named peers-assisted learning is used to minimize the prediction difference between multiple target-specific classifiers, which makes the classifiers more discriminant for the target domain. Extensive experiments conducted on three PDA benchmark data sets show that TSCDA outperforms other state-of-the-art methods with a large margin, e.g., 4% and 5.6% averagely on Office-31 and Office-Home, respectively.
机译:无监督域适应(UDA)旨在减少从标记的源域传输到未标记的目标域时的分布差异。之前的UDA方法假设源和目标域共享相同的标签空间,这在实践中是不现实的,因为目标域的标签信息是不可知的。本文重点介绍了更现实的UDA方案,即部分域适应(PDA),其中目标标签空间已向源标签空间括起来。在PDA方案中,目标域中不存在的源异常值可能会错误地匹配目标域(技术命名为负转移),导致UDA方法的性能下降。本文提出了一种新的目标域特定分类器基于域的域适应(TSCDA)方法。 TSCDA呈现出软称重的最大平均差异标准,以部分对齐特征分布和缓解负转移。此外,它为具有伪标签和多个辅助分类器的目标域和多个辅助分类器学习一个特定于目标域的特定于目标域,以进一步地解决分类器偏移。命名为对等体辅助学习的模块用于最小化多个目标专用分类器之间的预测差异,这使得分类器更加判别目标域。在三个PDA基准数据集中进行的广泛实验表明,TSCDA分别优于其他最先进的方法,例如,在Office-31和Office-home中,例如,在办公室31和办公室分别具有大的边缘,例如4%和5.6%。

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