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Papers/Learning to Transfer Examples for Partial Domain Adaptation

Learning to Transfer Examples for Partial Domain Adaptation

Zhangjie Cao, Kaichao You, Mingsheng Long, Jian-Min Wang, Qiang Yang

2019-03-28CVPR 2019 6Transfer LearningPartial Domain AdaptationDomain Adaptation
PaperPDFCode

Abstract

Domain adaptation is critical for learning in new and unseen environments. With domain adversarial training, deep networks can learn disentangled and transferable features that effectively diminish the dataset shift between the source and target domains for knowledge transfer. In the era of Big Data, the ready availability of large-scale labeled datasets has stimulated wide interest in partial domain adaptation (PDA), which transfers a recognizer from a labeled large domain to an unlabeled small domain. It extends standard domain adaptation to the scenario where target labels are only a subset of source labels. Under the condition that target labels are unknown, the key challenge of PDA is how to transfer relevant examples in the shared classes to promote positive transfer, and ignore irrelevant ones in the specific classes to mitigate negative transfer. In this work, we propose a unified approach to PDA, Example Transfer Network (ETN), which jointly learns domain-invariant representations across the source and target domains, and a progressive weighting scheme that quantifies the transferability of source examples while controlling their importance to the learning task in the target domain. A thorough evaluation on several benchmark datasets shows that our approach achieves state-of-the-art results for partial domain adaptation tasks.

Results

TaskDatasetMetricValueModel
Domain AdaptationOffice-HomeAccuracy (%)70.5ETN
Domain AdaptationOffice-31Accuracy (%)96.7ETN
Domain AdaptationImageNet-CaltechAccuracy (%)79.1ETN

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