TY - GEN
T1 - Employing automatic speech recognition for quantitative oral corrective feedback in Japanese second or foreign language education
AU - Kataoka, Yuka
AU - Thamrin, Achmad Husni
AU - Murai, Jun
AU - Kataoka, Kotaro
N1 - Funding Information:
This research was supported by Taichiro Mori Memorial Research Grants 2018 for Graduate Students Researcher Development at Keio University. Authors are grateful to Prof. Osamu Nakamura, Prof. Keiko Okawa, and Prof. Rodney Van Meter at Keio University, Prof. Tim Ashwell at Komazawa University for their advice to improve this research activity.
Publisher Copyright:
© 2019 Association for Computing Machinery.
PY - 2019/10/28
Y1 - 2019/10/28
N2 - In Second or Foreign Language (SFL) education, a number of studies in applied linguistics have addressed a common issue of how teachers can provide effective feedback to correct learner's erroneous utterances during a classroom hour. Oral Corrective Feedback (OCF) is generally time-consuming and labor-intensive work for teachers. The use of ASR (Automatic Speech Recognition) in SFL education has drawn attention from both teachers and learners to increase the learning effect and efficiency. We designed and integrated Quantitative OCF using Google Cloud Speech-to-Text as a part of the oral assessment using an LMS (Learning Management System) for Japanese SFL courses. The level of learners is a starter's level without any prerequisite knowledge of Japanese language. Preliminary experiments using a total of 214 audio datasets by non-native speakers exhibited that 37.4% of the datasets were recognized properly as Japanese sentences. However, as the remainder of the datasets contains erroneous utterances, characteristics of intonation, or noise, ASR successfully detected word-based errors with high accuracy (82.4%) but low precision (28.1%). Oral assessment employing ASR is highly promising as a complementary system for teachers on partially automating the assessment of audio data from learners with evidence and priority orders as well as significantly reducing teachers' scoring workload and time spent on the most problematic part of the students' speech. While our implementation still requires teachers to double-check, such overhead is small and affordable.
AB - In Second or Foreign Language (SFL) education, a number of studies in applied linguistics have addressed a common issue of how teachers can provide effective feedback to correct learner's erroneous utterances during a classroom hour. Oral Corrective Feedback (OCF) is generally time-consuming and labor-intensive work for teachers. The use of ASR (Automatic Speech Recognition) in SFL education has drawn attention from both teachers and learners to increase the learning effect and efficiency. We designed and integrated Quantitative OCF using Google Cloud Speech-to-Text as a part of the oral assessment using an LMS (Learning Management System) for Japanese SFL courses. The level of learners is a starter's level without any prerequisite knowledge of Japanese language. Preliminary experiments using a total of 214 audio datasets by non-native speakers exhibited that 37.4% of the datasets were recognized properly as Japanese sentences. However, as the remainder of the datasets contains erroneous utterances, characteristics of intonation, or noise, ASR successfully detected word-based errors with high accuracy (82.4%) but low precision (28.1%). Oral assessment employing ASR is highly promising as a complementary system for teachers on partially automating the assessment of audio data from learners with evidence and priority orders as well as significantly reducing teachers' scoring workload and time spent on the most problematic part of the students' speech. While our implementation still requires teachers to double-check, such overhead is small and affordable.
KW - Automatic Speech Recognition
KW - Japanese Second or Foreign Language education
KW - Quantitative Oral Corrective Feedback
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U2 - 10.1145/3369255.3369285
DO - 10.1145/3369255.3369285
M3 - Conference contribution
AN - SCOPUS:85079053477
T3 - ACM International Conference Proceeding Series
SP - 52
EP - 58
BT - Proceedings of the 2019 11th International Conference on Education Technology and Computers, ICETC 2019
PB - Association for Computing Machinery
T2 - 11th International Conference on Education Technology and Computers, ICETC 2019
Y2 - 28 October 2019 through 31 October 2019
ER -