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A Stacked, Voted, Stacked Model for Named Entity Recognition

This paper investigates stacking and voting methods for combining strong classifiers like boosting, SVM, and TBL, on the named-entity recognition task. We demonstrate several effective approaches, culminating in a model that achieves error rate reductions on the development and test sets of 63.6% and 55.0% (English) and 47.0% and 51.7% (German) over the CoNLL-2003 standard baseline respectively, and 19.7% over a strong AdaBoost baseline model from CoNLL-2002.


Dekai Wu, Grace Ngai and Marine Carpuat, A Stacked, Voted, Stacked Model for Named Entity Recognition. In: Proceedings of CoNLL-2003, Edmonton, Canada, 2003, pp. 200-203. [ps] [ps.gz] [pdf] [bibtex] (with corrections)
Last update: June 11, 2003. erikt@uia.ua.ac.be