A Unified Framework for Distance-Aware Domain Adaptation

Fei Wang, Youdong Ding, Huan Liang, Yuzhen Gao, W. Che
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引用次数: 0

Abstract

Unsupervised domain adaptation has achieved significant results by leveraging knowledge from a source domain to learn a related but unlabeled target domain. Previous methods are insufficient to model domain discrepancy and class discrepancy, which may lead to misalignment and poor adaptation performance. To address this problem, in this paper, we propose a unified framework, called distance-aware domain adaptation, which is fully aware of both cross-domain distance and class-discriminative distance. In addition, second-order statistics distance and manifold alignment are also exploited to extract more information from data. In this manner, the generalization error of the target domain in classification problems can be reduced substantially. To validate the proposed method, we conducted experiments on five public datasets and an ablation study. The results demonstrate the good performance of our proposed method.
距离感知域自适应的统一框架
无监督域自适应通过利用源域的知识来学习相关但未标记的目标域,取得了显著的效果。以往的方法对领域差异和类差异建模不足,可能导致不匹配和自适应性能差。为了解决这一问题,本文提出了一个统一的框架,称为距离感知领域自适应,该框架充分意识到跨领域距离和类别区分距离。此外,还利用二阶统计量距离和流形对齐来从数据中提取更多的信息。这样可以大大降低分类问题中目标域的泛化误差。为了验证所提出的方法,我们在五个公共数据集和消融研究上进行了实验。结果表明,该方法具有良好的性能。
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