The effect of Iranian teachers burnout on using paralanguage signals in EFL context
Publish Year: 1395
نوع سند: مقاله کنفرانسی
زبان: English
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شناسه ملی سند علمی:
ELSCONF04_214
تاریخ نمایه سازی: 19 خرداد 1396
Abstract:
The study aims at 1) determining the level of burnout among EFL English language teachers in Hamedan, Iran by measuring their level of burnout in its components and its relationship with teaching experience and gender and 2)investigating to what extent paralanguage signals are affected by teachers burnout in the learning process.Participants of the study consisted of 138 institute teachers including 71 men and 67 women. Their experiences inteaching ranged from 6-10, 11-15 and over 16 years with the age range of 20 to 40 years old. The study tended to use Maslach Burnout Inventory (MBI) questionnaire to measure the level of burnout among teachers and then observation of classrooms of those burnout suffering teachers. Burnout syndrome was compared with teaching experience andgender of the participants using descriptive statistics and regression analysis. The results indicated that male teacherssuffered burnout more than female teachers. Considering burnout and teaching experience, the results showed thatteachers who reached 16 years of teaching encountered burnout syndrome. Also it was indicated that gender predictsemotional exhaustion and burnout more than teaching experience. Having identified 64 burnout teachers, 15 of them were observed. Classroom observations revealed that paralanguage signals were affected by burnout syndrome. The study might contribute to policy makers keeping teachers from destructive psychological and social factors and changes so as to plan to improve learning in the classrooms
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Authors
Mohammad Hakani
Shiraz University
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