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Active learning for HPSG parse selection

We describe new features and algorithms for HPSG parse selection models and address the task of creating annotated material to train them. We evaluate the ability of several sample selection methods to reduce the number of annotated sentences necessary to achieve a given level of performance. Our best method achieves a 60% reduction in the amount of training material without any loss in accuracy.


Jason Baldridge and Miles Osborne, Active learning for HPSG parse selection. In: Proceedings of CoNLL-2003, Edmonton, Canada, 2003, pp. 17-24. [ps] [ps.gz] [pdf] [bibtex]
Last update: June 11, 2003. erikt@uia.ua.ac.be