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Unsupervised Domain Adaptation with Feature Embeddings
Published 14 Dec 2014 in cs.CL and cs.LG | (1412.4385v3)
Abstract: Representation learning is the dominant technique for unsupervised domain adaptation, but existing approaches often require the specification of "pivot features" that generalize across domains, which are selected by task-specific heuristics. We show that a novel but simple feature embedding approach provides better performance, by exploiting the feature template structure common in NLP problems.
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