
Exploring the Determinants of AI Tool Adoption in Technical English Learning: A PLS-SEM Approach among Polytechnic Students
Kamilah Zainuddin
General Studies Department, Politeknik Kota Bharu, Kelantan, Malaysia
Faculty of Creative Technology and Heritage, Universiti Malaysia Kelantan, Malaysia
Khairul Azhar Mat Daud
Faculty of Creative Technology and Heritage, Universiti Malaysia Kelantan, Malaysia
Noor Asmaa’ Hussein
General Studies Department, Politeknik Kota Bharu, Kelantan, Malaysia
Abstract
Technical English (TE) proficiency is crucial for the future careers of polytechnic students. While Artificial Intelligence (AI) tools offer significant potential to enhance language learning, their effectiveness relies on student acceptance and use. There is limited understanding of what drives polytechnic students to adopt these tools specifically for TE. This study aims to identify the key factors influencing polytechnic students' acceptance and use of AI tools in this context and employ a quantitative approach based on the Technology Acceptance Model (TAM) and Partial Least Squares Structural Equation Modeling (PLS-SEM) to analyze survey data collected from 100 Polytechnic Kota Bharu (PKB) students enrolled in TE courses. The research investigates core antecedents, primarily perceived usefulness (PU) and perceived ease of use (PEOU), and their impact on students' behavioral intention (BI) to use AI tools. The potential influence of external factors such as social influence and lecturer support are examined. The study found PEOU was identified as a critical antecedent, which significantly positively affected PU and BI. The study reaffirmed the significant predictive power of BI on AU, indicating that students' stated intentions reliably translate into their subsequent usage behaviour. This research will offer practical recommendations for educators seeking to integrate AI tools effectively into TE instruction. Theoretically, this study contributes to understanding technology adoption within the specific domain of technical and vocational language education, providing valuable insights for leveraging AI to improve essential communication skills for aspiring technical professionals.
Keywords: Technical English, Artificial Intelligence (AI) Tools, Technology Acceptance Model, Perceived Usefulness, Perceived Ease of Use, Behavioral Intention
DOI: 10.24191/ejssh.v9i1.5020
References:
Abdullah, S. A., & Basheer, I. (2024). The Ethical and Social Implications of Using Artificial Intelligence in Social Studies Instruction.. Larq Journal for Philosophy, Linguistics & Social Sciences, 1(52).
Alharbi, J. M. (2025). Adoption of Artificial Intelligence Tools for English Language Learning Among Saudi EFL University Students: The Moderating Role of Faculty. Journal of Ecohumanism, 4(2), 804–819.
Amanda, S., & Hesty, W. (2024). Exploring Students' Perceptions in the Use of Artificial Intelligence Technology: The Influence of ChatGPT on Language Learning. International Proceedings Universitas Tulungagung.
Ansas, V. N., Pradana, H., Fauzi, F. R., Anugerah, B., Nurcahyo, W. H., Muchdirin, & Dewatri, R. A. F. (2024). Towards AI-Integrated English Learning Activities: A TAM Analysis of Vocational Students' Behavioral Intention. ODELIA Journal, 2(2), 33–44.
Basuki, R., Tarigan, Z. J. H., Siagian, H., Limanta, L. S., & Setiawan, D. (2022). The effects of perceived ease of use, usefulness, enjoyment and intention to use online platforms on behavioral intention in online movie watching during the pandemic era (Doctoral dissertation, Petra Christian University).
Chan, C. S. (2021). University graduates’ transition into the workplace: How they learn to use English for work and cope with language-related challenges. System, 100, 102530.
Chen, L., & Aklikokou, A. K. (2020). Determinants of E-government adoption: testing the mediating effects of perceived usefulness and perceived ease of use. International Journal of Public Administration, 43(10), 850-865.
Darwish, D. (2025). Artificial Intelligence Implementation in Education Processes. Deep Science Publishing.
Farooqi, M. T. K., Amanat, I., & Awan, S. M. (2024). Ethical considerations and challenges in the integration of artificial intelligence in education: A systematic review. Journal of Excellence in Management Sciences, 3(4), 35-50.
Gignac, G. E., & Szodorai, E. T. (2016). Effect size guidelines for individual differences researchers. Personality and individual differences, 102, 74-78.
Hair, J. F., Hult, G. T. M., Ringle, C. M., and Sarstedt, M. (2022). A Primer on Partial Least Squares Structural Equation Modeling (PLS-SEM)., 3rd Ed., Thousand Oakes, CA: Sage.
Hair, J. F., Risher, J. J., Sarstedt, M., & Ringle, C. M. (2019). When to use and how to report the results of PLS-SEM. European business review, 31(1), 2-24.
Harizah, N. H. B. M., & Said, N. (2024). Cognitive Styles on Students' Acceptance of Artificial Intelligence-Based Technology (ChatGPT and Kahoot!) for Language Learning. International Journal of E-Learning Practices, 7.
Huang, X., Zou, D., Cheng, G., Chen, X., & Xie, H. (2023). Trends, research issues and applications of artificial intelligence in language education. Educational Technology & Society, 26(1), 112-131.
Ismail, A. A., & Hassan, R. (2019). Technical competencies in digital technology towards industrial revolution 4.0. Journal of Technical Education and Training, 11(3).
Kavitha, K., & Joshith, V. P. (2025). Artificial intelligence powered pedagogy: Unveiling higher educators acceptance with extended TAM. Journal of University Teaching and Learning Practice, 21(08).
Kommineni, M., Chundru, S., Maroju, P. K., & Selvakumar, P. (2025). Ethical Implications of AI in Sustainable Development Pedagogy. In Rethinking the Pedagogy of Sustainable Development in the AI Era (pp. 17-36). IGI Global Scientific Publishing.
Kong, S. C., Yang, Y., & Hou, C. (2024). Examining teachers' behavioural intention of using generativeartificial intelligence tools for teaching and learning based on the extended technology acceptance model. Computers and Education:
Artificial Intelligence, 7, 100328.
Kovalenko, I., & Baranivska, N. (2024). Integrating Artificial Intelligence in English Language Teaching: Exploring the potential and challenges of AI tools in enhancing language learning outcomes and personalized education. Європейські соціо-правові та гуманітарні студії, (1), 86-95.
Krishnan, I. A., Ching, H. S., Ramalingam, S., Maruthai, E., Kandasamy, P., De Mello, G., ... & Ling, W. W. (2020). Challenges of learning English in 21st century: Online vs. traditional during Covid-19. Malaysian Journal of Social Sciences and Humanities (MJSSH), 5(9), 1-15.
Lee, Y., Kozar, K. A., & Larsen, K. R. T. (2003). The Technology Acceptance Model: Past, Present, and Future. Communications of the Association for Information Systems, 12(1), 50
Loor, M. A. M., Solorzano, D. M. A., Katherine, A., & Moreira, V. (2024). Integration of Artificial Intelligence in English Teaching. Journal of Cleaner Producfion, 289, 125834.
Memon, M. A., Ramayah, T., Cheah, J. H., Ting, H., Chuah, F., & Cham, T. H. (2021). PLS-SEM statistical programs: a review. Journal of Applied Structural Equation Modeling, 5(1), 1-14.
Nghia, T. L. H., Anh, N. P., & Kien, L. T. (2023). English language skills and employability: a theoretical framework. In English Language Education for Graduate Employability in Vietnam (pp. 71-93). Singapore: Springer Nature Singapore.
Otto, D., Assenmacher, V., Bente, A., Gellner, C., Waage, M., Deckert, R., ... & Kuche, J. (2024). student acceptance of AI-based feedback systems: an analysis based on the technology acceptance model (TAM). In INTED2024 Proceedings (pp. 3695-3701). IATED.
Pham, M. L., & Wu, T.-T. (2023). A Conceptual Framework on Learner's Attitude Toward Using AI Chatbot Based on TAM Model in English Classroom. Proceedings of ELTLT, 12(1), 146–154.
Ramamuruthy, V., Alias, N., & DeWitt, D. (2021). The need for technical communication for 21st century learning in tvet institutions: Perceptions of industry experts. Journal of Technical Education and Training, 13(1), 148-158.
Ramayah, T. (2024). Factors influencing the effectiveness of information system governance in higher education institutions (heis) through a partial least squares structural equation modeling (PLS-SEM) approach. IAIC Transactions on Sustainable Digital Innovation (ITSDI), 5(2), 100-107.
Renaldo, J. (2024). An Analysis Of Artificial Intelligence Chatbot Used By English Education Students In Completing Their Thesis (Doctoral dissertation, UIN Raden Intan Lampung).
Roshid, M. M., & Kankaanranta, A. (2025). English communication skills in international business: Industry expectations versus university preparation. Business and Professional Communication Quarterly, 88(1), 100-125.
Saeed, Rana & Al-Emran, Mostafa. (2018). Students Acceptance of Google Classroom: An Exploratory Study using PLS-SEM Approach. International Journal of Emerging Technologies in Learning (iJET). 13. 112-123. https//www.10.3991/ijet.v13i06.8275.
Salsabila, A., & Widiastuty, H. (2024). Exploring Students' Perceptions in the Use of ChatGPT for Language Learning. International Proceedings Universitas Tulungagung, 133–135.
Sánchez-Prieto, J. C., Cruz-Benito, J., Therón Sánchez, R., & García-Peñalvo, F. J. (2020). Assessed by machines: Development of a TAM-based tool to measure AI-based assessment acceptance among students. International Journal of Interactive Multimedia and Artificial Intelligence, 6(4), 80.
Scott, F. J., Connell, P., Thomson, L. A., & Willison, D. (2019). Empowering students by enhancing their employability skills. Journal of Further and Higher Education, 43(5), 692-707.
Taufik, A. A., & Fernandita, G. J. (2025). Examining Indonesian EFL Students' Acceptance of ChatGPT as a Supplementary English Grammar Learning Resource. WEJ, 9(1), 123–137.
Wang, Y., & Wang, Y. (2024). "To Use or Not to Use?" A Mixed-Methods Study on the Determinants of EFL College Learners' Behavioral Intention to Use AI. Journal of Educational Technology & Society, 27(2), 135-149. https://files.eric.ed.gov/fulltext/EJ1441386.pdf
Wei, L. (2023). Artificial Intelligence in Language Instruction: Impact on English Learning Achievement, L2 Motivation, and Self-Regulated Learning. Frontiers in Psychology, 14, 1261955.
Wei, W., Zhao, A., & Ma, H. (2025). Understanding How AI Chatbots Influence EFL Learners' Oral English Learning Motivation and Outcomes. IEEE Access, 13, 56699–56716.
Wilson, N., Keni, K., & Tan, P. H. P. (2021). The role of perceived usefulness and perceived ease-of-use toward satisfaction and trust which influence computer consumers' loyalty in China. Gadjah Mada International Journal of Business, 23(3), 262-294.
Wiprayoga, P., Gede, S., & Suasana, G. A. K. G. (2023). The role of attitude toward using mediates the influence of perceived usefulness and perceived ease of use on behavioral intention to use. Russian Journal of Agricultural and Socio-Economic Sciences, 140(8), 53-68.
Yang, T. (2024). Impact of Artificial Intelligence Software on English Learning Motivation and Achievement. SHS Web of Conferences, APMM 2024, 02011.
Yousaf, K., Boparai, R. S., Singh, S., & Bothra, A. (2024). Factors Influencing Health Care Technology Acceptance in Older Adults Based on the Technology Acceptance Model and the Unified Theory of Acceptance and Use of Technology: Meta-Analysis. JMIR Aging, 7, e58370.
Zainuddin, S. Z. B., Pillai, S., Dumanig, F. P., & Phillip, A. (2019). English language and graduate employability. Education+ Training, 61(1), 79-93.
Zhai, C., Wibowo, S., & Li, L. D. (2024). The effects of over-reliance on AI dialogue systems on students' cognitive abilities: a systematic review. Smart Learning Environments, 11(1), 28.



