AI-Based Adaptive Learning Systems and their role in Enhancing Student Academic Performance
DOI:
https://doi.org/10.63544/ijss.v5i1.233Keywords:
Artificial Intelligence, Adaptive Learning Systems, Academic Performance, Student Engagement, Personalized Learning, Educational TechnologyAbstract
The purpose of the study is to explore students’ perception regarding AI-based adaptive learning systems and examine how students perceive that AI systems have impacted their academic performance. The study is focused on such fundamental areas like awareness, perceived usefulness, personalization, engagement, challenges, and behavioural intention to use adaptive technology on learning. The research approach was quantitative and survey-based design. The data was collected using a sample of 300 students of different levels of education who were previously exposed to AI-based adaptive learning systems. On the basis of the demographic features and various dimensions of adaptive learning, the responses were gathered with the assistance of a structured questionnaire. The analysis of the data was based on descriptive statistical tools, including frequencies, percentages, mean scores, and standard deviations.
The results prove that the students are highly aware of the AI-based adaptive learning systems and that the students have high perceived usefulness of the technologies. It was also discovered that individualization and flexibility were strengths particularly in providing of personalized learning pathways and pacing. The research also indicates the presence of a positive impact on student engagement, self-directed learning, and perceived academic performance, particularly in reaching the learning objectives and positively affecting test performance. Nevertheless, such threats like the limitation of the internet, technical difficulties, and usability problems were discovered to impede optimal use. In spite of these obstacles, students were also reported to have a high behavioural intention to use AI-based adaptive learning systems again.
The paper concludes that AI-based adaptive learning systems can be highly effective to improve the student learning process and academic performance in case they are correctly implemented. To maximise their educational impact, it is necessary to address infrastructural and technical issues, as well as to offer institutional support and guidance. The results provide useful information to teachers, learning institutions, and system developers aiming to incorporate adaptive learning technologies to educational practice.
References
Adewale, M. D., Azeta, A., Abayomi-Alli, A., & Sambo-Magaji, A. (2024). Impact of artificial intelligence adoption on students' academic performance in open and distance learning: A systematic literature review. Heliyon, 10(22), Article e39579. https://doi.org/10.1016/j.heliyon.2024.e39579
Afshar, M. Z., & Shah, M. H. (2025). Leveraging Porter's diamond model: Public sector insights. The Critical Review of Social Sciences Studies, 3(2), 2255–2271.
Afzal, M., Arshad, N., & Shaheen, A. (2025). ChatGPT and the future of academic writing: Enhancing productivity and creativity. Journal of Engineering and Computational Intelligence Review, 3(1), 1–11.
Ahmed, S., & Asif, M. (2026). Public opinion on the effectiveness of local government anti-corruption measures: A multi-city survey analysis. International Journal of Social Sciences Bulletin, 4(1), 1189–1201. https://doi.org/10.5281/zenodo.18412790
Arshad, N., Baber, M. U., & Ullah, A. (2024). Assessing the transformative influence of ChatGPT on research practices among scholars in Pakistan. Mesopotamian Journal of Big Data. Advance online publication.
Asif, M., & Asghar, R. J. (2025). Managerial accounting as a driver of financial performance and sustainability in small and medium enterprises in Pakistan. Center for Management Science Research, 3(7), 150–163. https://doi.org/10.5281/zenodo.17596478
Asif, M., Ali, A., & Shaheen, F. A. (2025). Assessing the Effects of Artificial Intelligence in Revolutionizing Human Resource Management: A Systematic Review. Social Science Review Archives, 3(4), 2887–2908. https://doi.org/10.70670/sra.v3i3.1055
Cho, Y. C. (2022). Effects of AI-based personalized adaptive learning system in higher education. Journal of the Korean Association of Information Education, 26(4), 249–263. https://doi.org/10.14352/jkaie.2022.26.4.249
Das, S., Mutsuddi, I., & Ray, N. (2025). Artificial intelligence in adaptive education: A transformative approach. In Advancing adaptive education: Technological innovations for disability support (pp. 21–50). IGI Global.
Ezzaim, A., Dahbi, A., Assad, N., & Haidine, A. (2022). AI-based adaptive learning: State of the art. Proceedings of the International Conference on Advanced Intelligent Systems for Sustainable Development (pp. 155–167). Springer. https://doi.org/10.1007/978-3-031-09342-0_13
Gupta, T., Kumar, A., Roy, B. K., & Saini, S. (2024). Adaptive learning systems: Harnessing AI to personalize educational outcomes. International Journal for Research in Applied Science and Engineering Technology, 12(11), 458–464.
Habib, H., Jelani, S. A. K., & Najla, S. (2022). Revolutionizing inclusion: AI in adaptive learning for students with disabilities. Multidisciplinary Science Journal, 1(1), 1–11. https://doi.org/10.36948/msj.2022.v01i01.378
Hasan, M. A., Mazumder, M. T. R., Motari, M. C., Shourov, M. S. H., & Sarkar, M. (2025). AI-powered fraud detection: Strengthening risk monitoring with business intelligence in US financial institutions. Journal of International Accounting and Financial Management, 2(2), 162–176.
Imtiaz, N., Zannat, F., Ahmed, S., Hasan, M. A., & Mahmud, S. (2025). Leveraging AI for data-driven decision making and automation in the USA education sector. Journal of Economics, Management & Business Administration, 4(1), 87–106.
Iqbal, M. H. (2023). A review on the role of IoT in modern electrical engineering education. Journal of Engineering and Computational Intelligence Review, 1(1), 14–22.
Joshi, M. A. (2024). Adaptive learning through artificial intelligence. International Journal on Integrated Education, 7(2), 41–43.
Mustafa, G., Urooj, T., & Aslam, M. (2024). Role of artificial intelligence for adaptive learning environments in higher education by 2030. Journal of Social Research Development, 5(3), 1–15.
Sajja, R., Sermet, Y., Cikmaz, M., Cwiertny, D., & Demir, I. (2024). Artificial intelligence-enabled intelligent assistant for personalized and adaptive learning in higher education. Information, 15(10), Article 596. https://doi.org/10.3390/info15100596
Saleem, S., Aziz, M. U., Iqbal, M. J., & Abbas, S. (2025). AI in education: Personalized learning systems and their impact on student performance and engagement. The Critical Review of Social Sciences Studies, 3(1), 2445–2459.
Sari, H. E., Tumanggor, B., & Efron, D. (2024). Improving educational outcomes through adaptive learning systems using AI. International Transactions on Artificial Intelligence, 3(1), 21–31. https://doi.org/10.54216/ITAI.030102
Ullah, A., Shahzad, F., Ur Rehman, A., Naseer, M., & Akhtar, N. (2024). Analyzing the students' attitudes and behavior towards traditional classes and technology-enhanced online learning. International Journal of Social Science Archives, 7(3), 45–60.
Wang, X., Huang, R. T., Sommer, M., Pei, B., Shidfar, P., Rehman, M. S., & Martin, F. (2024). The efficacy of artificial intelligence-enabled adaptive learning systems from 2010 to 2022 on learner outcomes: A meta-analysis. Journal of Educational Computing Research, 62(6), 1348–1383. https://doi.org/10.1177/07356331241234567
Younus, A. M., Abumandil, M. S., Gangwar, V. P., & Gupta, S. K. (2022). AI-based smart education system for a smart city using an improved self-adaptive leap-frogging algorithm. In AI-centric smart city ecosystems (pp. 231–245). CRC Press.
Zaman, M. A. U., & Akhter, E. (2023). Adaptive learning systems for English literature classrooms: A review of AI-integrated education platforms. International Journal of Scientific Interdisciplinary Research, 4(3), 56–86.
Downloads
Published
How to Cite
Issue
Section
Categories
License
Copyright (c) 2026 Mahrukh Rehman Mirza, Sadaf Raja, Amal Noor Nizami

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
The work is concurrently licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License, which permits others to share the work with an acknowledgement of the authorship and the work's original publication in this journal, while the authors retain copyright and grant the journal the right of first publication.