Publication | Closed Access
Automatic rule induction for unknown-word guessing
260
Citations
16
References
1997
Year
Unknown Venue
Words unknown to the lexicon present a substantial problem to NLP modules that rely on mor-phosyntactic information, such as part-of-speech taggers or syntactic parsers. In this paper we present a technique for fully automatic acquisition of rules that guess possible part-of-speech tags for unknown words using their starting and ending segments. The learning is performed from a general-purpose lexicon and word frequencies collected from a raw corpus. Three complimentary sets of word-guessing rules are statistically induced: prefix morphological rules, suffix morpho-logical rules and ending-guessing rules. Using the proposed technique, unknown-word-guessing rule sets were induced and integrated into a stochastic tagger and a rule-based tagger, which were then applied to texts with unknown words. 1.
| Year | Citations | |
|---|---|---|
Page 1
Page 1