A Multisemiotic Investigation of Iranian EFL Teachers’ Turn-allocation Strategies in their Classroom Interactions
Publish place: Language Related Resaerch، Vol: 13، Issue: 3
Publish Year: 1401
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:
JR_LRR-13-3_017
تاریخ نمایه سازی: 9 مهر 1401
Abstract:
Second/foreign language classroom interaction is believed to have its own idiosyncrasies and peculiarities. Many studies have focused on the importance of turn-taking systems for students to gain and hold the floor. Nevertheless, a limited number of studies has explored teachers’ turn-allocation strategies in their instructional interactions. Motivated by this gap, through the methodological framework of Conversation Analysis (CA), the present study attempted to investigate the frequently employed turn-allocation strategies that Iranian EFL teachers use in their classroom interactions with their students. To this end, a corpus of nine hours of English instruction was video-recorded and analyzed through Sacks et al.’s (۱۹۷۴) model of turn-allocation. The results of in-depth qualitative analysis indicated that Iranian EFL teachers used multiple resources to allocate the turn to their students. More specifically, it was found that Iranian teachers generally allocate turns to their students through directing their gaze towards them as well as nominating them by their names. Moreover, the teachers, in this study, used non-verbal strategies of head nods and pointing gestures to nominate the next speaker to take the turn. The study ends with some implications for the EFL teachers in that they can manage their turn-allocation techniques more efficiently in their instructional interactions.
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Authors
Farhad Ghiasvand
PhD Candidate of Applied Linguistics, Allameh Tabataba’i University, Tehran, Iran
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