Previous abstract | Contents | Next abstract

A very very large corpus doesn't always yield reliable estimates

Banko and Brill (2001) suggested that the development of very large training corpora may be more effective for progress in empirical Natural Language Processing than improving methods that use existing smaller training corpora.

This work tests their claim by exploring whether a very large corpus can eliminate the sparseness problems associated with estimating unigram probabilities. We do this by empirically investigating the convergence behaviour of unigram probability estimates on a one billion word corpus. When using one billion words, as expected, we do find that many of our estimates do converge to their eventual value. However, we also find that for some words, no such convergence occurs. This leads us to conclude that simply relying upon large corpora is not in itself sufficient: we must pay attention to the statistical modelling as well.


James R. Curran and Miles Osborne, A very very large corpus doesn't always yield reliable estimates. In: Dan Roth and Antal van den Bosch (eds.), Proceedings of CoNLL-2002, Taipei, Taiwan, 2002, pp. 126-131. [ps] [ps.gz] [pdf] [bibtex]
Last update: September 07, 2002. erikt@uia.ua.ac.be