Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4937462 | Computers in Human Behavior | 2017 | 11 Pages |
Abstract
Syntactic competence, especially the ability to use a wide range of sophisticated grammatical expressions, represents an important aspect of communicative acumen. This paper explores the question of how to best evaluate the syntactic competence of non-native speakers in an automated way. Using spoken responses of test takers participating in an English practice assessment, three classes of grammatical features - features based on n-grams of part-of-speech tags (POS), features based on various clause types, and features based on various phrases - are compared in an end-to-end assessment system. Feature correlations with human proficiency scores show that POS features and phrase features exhibit the highest correlations with human scores. Including these three classes of grammar features in a baseline scoring model that measures various aspects of spoken proficiency excluding aspects of grammar, we find substantial increases in agreement between machine and human scores. Finally, we discuss the broader implications of our results on the design of automatic scoring systems for spoken language.
Keywords
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Physical Sciences and Engineering
Computer Science
Computer Science Applications
Authors
Klaus Zechner, Su-Youn Yoon, Suma Bhat, Chee Wee Leong,