Predicting the Spelling Difficulty of Words for Language Learners

Lisa Beinborn, Torsten Zesch, Iryna Gurevych
2016 Proceedings of the 11th Workshop on Innovative Use of NLP for Building Educational Applications  
In many language learning scenarios, it is important to anticipate spelling errors. We model the spelling difficulty of words with new features that capture phonetic phenomena and are based on psycholinguistic findings. To train our model, we extract more than 140,000 spelling errors from three learner corpora covering English, German and Italian essays. The evaluation shows that our model predicts spelling difficulty with an accuracy of over 80% and yields a stable quality across corpora and
more » ... nguages. In addition, we provide a thorough error analysis that takes the native language of the learners into account and provides insights into crosslingual transfer effects.
doi:10.18653/v1/w16-0508 dblp:conf/bea/BeinbornZG16 fatcat:cr2rjbg4bnc4ljrepncn47jenq