Prepositional Phrase Attachment through a Backed-Off Model
Abstract
Recent work has considered corpus-based or statistical approaches to the problem of prepositional phrase attachment ambiguity. Typically, ambiguous verb phrases of the form {v np1 p np2} are resolved through a model which considers values of the four head words (v, n1, p and n2). This paper shows that the problem is analogous to n-gram language models in speech recognition, and that one of the most common methods for language modeling, the backed-off estimate, is applicable. Results on Wall Street Journal data of 84.5% accuracy are obtained using this method. A surprising result is the importance of low-count events - ignoring events which occur less than 5 times in training data reduces performance to 81.6%.
Keywords
Cite
@article{arxiv.cmp-lg/9506021,
title = {Prepositional Phrase Attachment through a Backed-Off Model},
author = {Michael Collins and James Brooks},
journal= {arXiv preprint arXiv:cmp-lg/9506021},
year = {2008}
}
Comments
To appear in Proceedings of the Third Workshop on Very Large Corpora, 12 pages, LaTeX