Parameter Reference Loss for Unsupervised Domain Adaptation
Jiren Jin, Richard G. Calland, Takeru Miyato, Brian K. Vogel, Hideki, Nakayama

TL;DR
This paper introduces a Parameter Reference Loss (PRL) for unsupervised domain adaptation that enhances target domain performance, stabilizes training, and eliminates the need for target labels during model selection.
Contribution
The paper proposes a novel PRL method that improves target domain accuracy and training stability without relying on target labels for hyper-parameter tuning.
Findings
PRL improves target domain performance.
PRL stabilizes training procedures.
PRL eliminates need for target labels in model selection.
Abstract
The success of deep learning in computer vision is mainly attributed to an abundance of data. However, collecting large-scale data is not always possible, especially for the supervised labels. Unsupervised domain adaptation (UDA) aims to utilize labeled data from a source domain to learn a model that generalizes to a target domain of unlabeled data. A large amount of existing work uses Siamese network-based models, where two streams of neural networks process the source and the target domain data respectively. Nevertheless, most of these approaches focus on minimizing the domain discrepancy, overlooking the importance of preserving the discriminative ability for target domain features. Another important problem in UDA research is how to evaluate the methods properly. Common evaluation procedures require target domain labels for hyper-parameter tuning and model selection, contradicting…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · Cancer-related molecular mechanisms research
