Conference Proceedings

Cross-lingual Transfer for Unsupervised Dependency Parsing Without Parallel Data

L Duong, T Cohn, S BIRD, P Cook

The Association for Computational Linguistics | Published : 2015

Abstract

Cross-lingual transfer has been shown to produce good results for dependency parsing of resource-poor languages. Although this avoids the need for a target language treebank, most approaches have still used large parallel corpora. However, parallel data is scarce for low-resource languages, and we report a new method that does not need parallel data. Our method learns syntactic word embeddings that generalise over the syntactic contexts of a bilingual vocabulary, and incorporates these into a neural network parser. We show empirical improvements over a baseline delexicalised parser on both the CoNLL and Universal Dependency Treebank datasets. We analyse the importance of the source languages..

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University of Melbourne Researchers