University students' behavioral intention and gender differences toward the acceptance of shifting regular field training courses to e-training courses.

University students' behavioral intention and gender differences toward the acceptance of shifting regular field training courses to e-training courses.

Alghamdi, Abdullah M;Alsuhaymi, Dhaifallah S;Alghamdi, Fahad A;Farhan, Ahmed Mohamed;Shehata, Saleh M;Sakoury, Mona Mostafa;
Education and information technologies 2022 Vol. 27 pp. 451-468
187
alghamdi2022universityeducation

Abstract

During the COVID-19 lockdown, all the courses at Imam Abdulrahman Bin Faisal University (IAU) were delivered fully online, including field-training courses. Since there was no previous experience in offering field-training courses in a distance format, the current study aims to identify factors that could impact students' behavioral intention to accept the e-training approach in teaching field training courses at IAU. In order to gather the data, the researchers designed a questionnaire based on the UTAUT model and they ensured the face, content, and construct validity of the questionnaire by sending it to five experts in the relevant field and by using exploratory factor analysis. Also, all the questionnaire's items were reliable since the Cronbach's alpha values were above 0.77 for all the items. A total of 397 participants provided valid responses. The result of this study indicated that Effort Expectancy (EE), Facilitating Condition (FC), Performance Expectancy (PE), and Social Influence (SI), respectively were the primary predictors for students' intention to use e-training. These factors explained 32.1% of the variance in students' behavioral intentions. As far as students' gender is concerned, there were significant differences between students' PE, FC, and SI. Based on these results, policymakers at IAU will have a clear image of the most essential factors that colleges should target to increase students' acceptance of e-training.

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