TL;DR
This paper introduces Vicinal and Categorical Domain Adaptation (ViCatDA), a novel method that enhances domain and category alignment by using vicinal domains and joint classifiers, achieving state-of-the-art results.
Contribution
It proposes a new vicinal domain concept and joint category-domain classifier with novel adversarial losses for improved domain adaptation performance.
Findings
Achieves state-of-the-art results on benchmark datasets.
Effectively aligns category and domain distributions.
Improves target discrimination recovery.
Abstract
Unsupervised domain adaptation aims to learn a task classifier that performs well on the unlabeled target domain, by utilizing the labeled source domain. Inspiring results have been acquired by learning domain-invariant deep features via domain-adversarial training. However, its parallel design of task and domain classifiers limits the ability to achieve a finer category-level domain alignment. To promote categorical domain adaptation (CatDA), based on a joint category-domain classifier, we propose novel losses of adversarial training at both domain and category levels. Since the joint classifier can be regarded as a concatenation of individual task classifiers respectively for the two domains, our design principle is to enforce consistency of category predictions between the two task classifiers. Moreover, we propose a concept of vicinal domains whose instances are produced by a convex…
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