Bootstrapping Coreference Classifiers with Multiple Machine
Learning Algorithms
Vincent Ng and Claire Cardie.
Proceedings of the 2003 Coreference on Empirical Methods in Natural Language Processing (EMNLP), pp. 113-120, 2003.
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Abstract
Successful application of multi-view co-training algorithms relies on
the ability to factor the available features into views that are
compatible and uncorrelated. This can potentially preclude their
use on problems such as coreference resolution that lack
an obvious feature split.
To bootstrap coreference classifiers, we propose and evaluate a
single-view weakly supervised algorithm that relies on two different
learning algorithms in lieu of the two different views required by
co-training. In addition, we
investigate a method for ranking unlabeled instances to be fed back
into the bootstrapping loop as labeled data, aiming to alleviate the
problem of performance deterioration that is commonly observed in
the course of bootstrapping.
BibTeX entry
@InProceedings{Ng+Cardie:03b,
author = {Vincent Ng and Claire Cardie},
title = {Bootstrapping Coreference Classifiers with Multiple Machine Learning Algorithms},
booktitle = {Proceedings of the 2003 Conference on Empirical Methods in Natural Language Processing},
pages = {113--120},
year = 2003
}