論文

2014年

Discovering formulaic language through data-driven learning: Student attitudes and efficacy

ReCALL
  • Joe Geluso
  • ,
  • Atsumi Yamaguchi

26
2
開始ページ
225
終了ページ
242
記述言語
英語
掲載種別
研究論文(学術雑誌)
DOI
10.1017/S0958344014000044
出版者・発行元
Cambridge University Press

Corpus linguistics has established that language is highly patterned. The use of patterned language has been linked to processing advantages with respect to listening and reading, which has implications for perceptions of fluency. The last twenty years has seen an increase in the integration of corpus-based language learning, or data-driven learning (DDL), as a supporting feature in teaching English as a foreign / second language (EFL/ESL). Most research has investigated student attitudes towards DDL as a tool to facilitate writing. Other studies, though notably fewer, have taken a quantitative perspective of the efficacy of DDL as a tool to facilitate the inductive learning of grammar rules. The purpose of this study is three-fold: (1) to present an EFL curriculum designed around DDL with the aim of improving spoken fluency
(2) to gauge how effective students were in employing newly discovered phrases in an appropriate manner
and (3) to investigate student attitudes toward such an approach to language learning. Student attitudes were investigated via a questionnaire and then triangulated through interviews and student logs. The findings indicate that students believe DDL to be a useful and effective tool in the classroom. However, students do note some difficulties related to DDL, such as encountering unfamiliar vocabulary and cut-off concordance lines. Finally, questions are raised as to the students' ability to embed learned phrases in a pragmatically appropriate way. Copyright © 2014 European Association for Computer Assisted Language Learning 2014Â.

リンク情報
DOI
https://doi.org/10.1017/S0958344014000044
ID情報
  • DOI : 10.1017/S0958344014000044
  • ISSN : 1474-0109
  • ISSN : 0958-3440
  • SCOPUS ID : 84898791889

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