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Factors Influencing Attitudes of University Students towards ChatGPT and its Usage: A Multi-National Study Validating the TAME-ChatGPT Survey Instrument
10
Zitationen
21
Autoren
2023
Jahr
Abstract
<title>Abstract</title> Artificial intelligence models, like ChatGPT, have the potential to revolutionize higher education when implemented properly. This study aimed to investigate the factors influencing university students’ attitudes and usage of ChatGPT in Arab countries. The survey instrument “TAME-ChatGPT” was administered to 2240 participants from Iraq, Kuwait, Egypt, Lebanon, and Jordan. Of those, 46.8% heard of ChatGPT, and 52.6% used it before the study. The results indicated that a positive attitude and usage of ChatGPT were determined by factors like ease of use, positive attitude towards technology, social influence, perceived usefulness, behavioral/cognitive influences, low perceived risks, and low anxiety. Confirmatory factor analysis indicated the adequacy of the “TAME-ChatGPT” constructs. Multivariate analysis demonstrated that the attitude towards ChatGPT usage was significantly influenced by country of residence, age, university type, and recent academic performance. This study validated “TAME-ChatGPT” as a useful tool for assessing ChatGPT adoption among university students. The successful integration of ChatGPT in higher education relies on the perceived ease of use, perceived usefulness, positive attitude towards technology, social influence, behavioral/cognitive elements, low anxiety, and minimal perceived risks. Policies for ChatGPT adoption in higher education should be tailored to individual contexts, considering the variations in student attitudes observed in this study.
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Autoren
- Maram Abdaljaleel
- Muna Barakat
- Mariam Alsanafi
- Nesreen A. Salim
- Husam Abazid
- Diana Malaeb
- Ali Haider Mohammed
- Bassam Abdul Rasool Hassan
- Abdulrasool M. Wayyes
- Sinan Subhi Farhan
- Sami El Khatib
- Mohamad Rahal
- Ali Sahban
- Doaa H. Abdelaziz
- Noha O. Mansour
- Reem Alzayer
- Roaa Khalil
- Feten Fekih‐Romdhane
- Rabih Hallit
- Souheil Hallit
- Malik Sallam
Institutionen
- University of Jordan(JO)
- Applied Science Private University(JO)
- Kuwait University(KW)
- Gulf Medical University(AE)
- Monash University Malaysia(MY)
- Alrafidain University College(IQ)
- International University(KH)
- Holy Spirit University of Kaslik(LB)
- Future University in Egypt(EG)
- Mansoura University(EG)
- Razi Hospital(IR)