2020
DOI: 10.3233/jifs-189136
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Inter-class distribution alienation and inter-domain distribution alignment based on manifold embedding for domain adaptation

Abstract: Domain adaptation (DA) aims to train a robust predictor by transferring rich knowledge from a well-labeled source domain to annotate a newly coming target domain; however, the two domains are usually drawn from very different distributions. Most current methods either learn the common features by matching inter-domain feature distributions and training the classifier separately or align inter-domain label distributions to directly obtain an adaptive classifier based on the original features despite feature dis… Show more

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