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Aspect-augmented Adversarial Networks for Domain Adaptation
Author(s) -
Yuan Zhang,
Regina Barzilay,
Tommi Jaakkola
Publication year - 2017
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00077
Subject(s) - computer science , adversarial system , domain adaptation , classifier (uml) , artificial intelligence , transfer of learning , sentence , training set , domain (mathematical analysis) , relevance (law) , natural language processing , machine learning , invariant (physics) , mathematical analysis , mathematics , political science , law , physics , mathematical physics
We introduce a neural method for transfer learning between two (source and target) classification tasks or aspects over the same domain. Rather than training on target labels, we use a few keywords pertaining to source and target aspects indicating sentence relevance instead of document class labels. Documents are encoded by learning to embed and softly select relevant sentences in an aspect-dependent manner. A shared classifier is trained on the source encoded documents and labels, and applied to target encoded documents. We ensure transfer through aspect-adversarial training so that encoded documents are, as sets, aspect-invariant. Experimental results demonstrate that our approach outperforms different baselines and model variants on two datasets, yielding an improvement of 27% on a pathology dataset and 5% on a review dataset.

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