Conference Proceedings

Low Resource Dependency Parsing: Cross-lingual Parameter Sharing in a Neural Network Parser

L Duong, T COHN, S Bird, P Cook

The Association for Computational Linguistics | Published : 2015

Abstract

Training a high-accuracy dependency parser requires a large treebank. However, these are costly and time-consuming to build. We propose a learning method that needs less data, based on the observation that there are underlying shared structures across languages. We exploit cues from a different source language in order to guide the learning process. Our model saves at least half of the annotation effort to reach the same accuracy compared with using the purely supervised method.

University of Melbourne Researchers

Grants

Awarded by Australian Research Council Future Fellowship


Awarded by Australian Research Council


Funding Acknowledgements

This work was supported by the University of Melbourne and National ICT Australia (NICTA). Trevor Cohn is the recipient of an Australian Research Council Future Fellowship (project number FT130101105).