In:
Computational Linguistics, MIT Press, Vol. 26, No. 3 ( 2000-09), p. 301-317
Abstract:
In a medical information extraction system, we use common word association techniques to extract side-effect-related terms. Many of these terms have a frequency of less than five. Standard word-association-based applications disregard the lowest-frequency words, and hence disregard useful information. We therefore devised an extraction system for the full word frequency range. This system computes the significance of association by the log-likelihood ratio and Fisher's exact test. The output of the system shows a recurrent, corpus-independent pattern in both recall and the number of significant words. We will explain these patterns by the statistical behavior of the lowest-frequency words. We used Dutch verb-particle combinations as a second and independent collocation extraction application to illustrate the generality of the observed phenomena. We will conclude that a) word-association-based extraction systems can be enhanced by also considering the lowest-frequency words, b) significance levels should not be fixed but adjusted for the optimal window size, c) hapax legomena, words occurring only once, should be disregarded a priori in the statistical analysis, and d) the distribution of the targets to extract should be considered in combination with the extraction method.
Type of Medium:
Online Resource
ISSN:
0891-2017
,
1530-9312
DOI:
10.1162/089120100561719
Language:
English
Publisher:
MIT Press
Publication Date:
2000
detail.hit.zdb_id:
602577-8
detail.hit.zdb_id:
2025069-1
SSG:
7,11
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