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- 295 creator chris-brew.
- 295 creator kirk-baker.
- 295 type InProceedings.
- 295 label "Statistical Identification of English Loanwords in Korean Using Automatically Generated Training Data".
- 295 sameAs 295.
- 295 abstract "This paper describes an accurate, extensible method for automatically classifying unknown foreign words that requires minimal monolingual resources and no bilingual training data (which is often difficult to obtain for an arbitrary language pair). We use a small set of phonologically-based transliteration rules to generate a potentially unlimited amount of pseudo-data that can be used to train a classifier to distinguish etymological classes of actual words. We ran a series of experiments on identifying English loanwords in Korean, in order to explore the consequences of using pseudo-data in place of the original training data. Results show that a sufficient quantity of automatically generated training data, even produced by fairly low precision transliteration rules, can be used to train a classifier that performs within 0.3% of one trained on actual English loanwords (96% accuracy).".
- 295 hasAuthorList authorList.
- 295 hasTopic Linguistics.
- 295 isPartOf proceedings.
- 295 keyword "Acquisition, Machine Learning".
- 295 keyword "Language modelling".
- 295 keyword "Multilinguality".
- 295 title "Statistical Identification of English Loanwords in Korean Using Automatically Generated Training Data".