Correction Detection and Error Type Selection as an ESL Educational Aid.

NAACL HLT '12: Proceedings of the 2012 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies(2012)

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摘要
We present a classifier that discriminates between types of corrections made by teachers of English in student essays. We define a set of linguistically motivated feature templates for a log-linear classification model, train this classifier on sentence pairs extracted from the Cambridge Learner Corpus, and achieve 89% accuracy improving upon a 33% baseline. Furthermore, we incorporate our classifier into a novel application that takes as input a set of corrected essays that have been sentence aligned with their originals and outputs the individual corrections classified by error type. We report the F-Score of our implementation on this task.
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关键词
sentence pair,Cambridge Learner Corpus,corrected essay,error type,individual correction,linguistically motivated feature template,log-linear classification model,novel application,student essay,ESL educational aid,correction detection,error type selection
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