Sparsely-Labeled Source Assisted Domain Adaptation
Wei Wang, Zhihui Wang, Yuankai Xiang, Jing Sun, Haojie Li, Fuming Sun,, Zhengming Ding

TL;DR
This paper introduces SLSA-DA, a novel domain adaptation method that effectively leverages limited labeled data in the source domain by combining projected clustering, label propagation, and distribution alignment.
Contribution
It proposes a unified optimization framework that integrates clustering, label propagation, and distribution alignment for sparsely-labeled source domain adaptation.
Findings
Improved domain adaptation performance with limited source labels.
Unified optimization framework enhances learning efficiency.
Effective label propagation from sparse labels.
Abstract
Domain Adaptation (DA) aims to generalize the classifier learned from the source domain to the target domain. Existing DA methods usually assume that rich labels could be available in the source domain. However, there are usually a large number of unlabeled data but only a few labeled data in the source domain, and how to transfer knowledge from this sparsely-labeled source domain to the target domain is still a challenge, which greatly limits their application in the wild. This paper proposes a novel Sparsely-Labeled Source Assisted Domain Adaptation (SLSA-DA) algorithm to address the challenge with limited labeled source domain samples. Specifically, due to the label scarcity problem, the projected clustering is conducted on both the source and target domains, so that the discriminative structures of data could be leveraged elegantly. Then the label propagation is adopted to propagate…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Cancer-related molecular mechanisms research · Respiratory viral infections research
