Classification of Utterance Acceptability Based on BLEU Scores for Dialogue-Based CALL Systems
説明
We propose a novel classification method of recognized second language learners utterances into three classes of acceptability for dialogue-based computer assisted language learning (CALL) systems. Our method uses a linear classifier trained with three types of bilingual evaluation understudy (BLEU) scores. The three BLEU scores are calculated respectively, referring to three subsets of a learner corpus divided according to the quality of sentences. Our method classifies learner utterances into three classes (correct, acceptable with some modifications and out-of-the-scope of assumed erroneous sentences), since it is suitable for providing effective feedback. Experimental results showed that our proposed classification method could distinguish utterance acceptability with 75.8 % accuracy.