Abstracts
Abstract
This scoping review examines how artificial intelligence (AI) has been conceptualized and applied in adaptive learning and learning analytics in K–12 online and distance education between 2020 and 2025. Following Arksey and O’Malley’s framework and reported in accordance with PRISMA-ScR, we analyzed 21 empirical studies to explore thematic patterns, methodological trends, and research gaps. Most studies reported gains for learners in engagement, motivation, and self-regulation. However, reported benefits were unevenly distributed and often favored better-resourced learners, particularly in contexts where teacher mediation and institutional support were modest. AI was explicitly integrated in two-thirds of the studies, yet definitional inconsistencies blurred distinctions between genuine intelligence and automated adaptation. Quantitative designs were predominant, largely focusing on performance outcomes as derived from system logs and test data. While a small but growing number of mixed-methods studies have focused on learner experience and teacher mediation, the field remains constrained by methodological consistency and insufficient clarity regarding AI mechanisms. The findings highlight the importance of clearer conceptual frameworks, research designs that are participatory and context-sensitive, and ethical approaches that center teacher expertise and learner participation. This review argues that the transformative potential of AI for adaptive learning depends less on technological sophistication than on equitable, pedagogically informed integration between human judgment and automated systems.
Keywords:
- artificial intelligence in education,
- AIED,
- adaptive learning,
- personalized learning,
- artificial intelligence,
- K-12 online learning,
- learning analytics,
- equity,
- scoping review
Appendices
Bibliography
- Aguerrebere, C., He, H., Kwet, M., Laakso, M.-J., Lang, C., Marconi, C., Price-Dennis, D., & Zhang, H. (2022). Global perspectives on learning analytics in K–12 education. In C. Lang, G. Siemens, & A. F. Wise (Eds.), The handbook of learning analytics (2nd ed., pp. 223–231). SOLAR. https://doi.org/10.18608/hla22.022
- Al-Malki, L., & Meccawy, M. (2022). Investigating students’ performance and motivation in computer programming through a gamified recommender system. Computers in the Schools, 39(2), 137–162. https://doi.org/10.1080/07380569.2022.2071229
- Arksey, H., & O’Malley, L. (2005). Scoping studies: Towards a methodological framework. International Journal of Social Research Methodology, 8(1), 19–32. https://doi.org/10.1080/1364557032000119616
- Bhatt, S. M., Van den Noortgate, W., & Verbert, K. (2024). Investigating the use of deep learning and implicit feedback in K12 educational recommender systems. IEEE Transactions on Learning Technologies, 17(1), 112–123. https://doi.org/10.1109/TLT.2023.3273422
- Boulhrir, T. (2025). [Review of the book Brave new words: How AI will revolutionize education (and why it’s a good thing) by Sal Khan]. The International Review of Research in Open and Distributed Learning, 26(4), 176–179. https://doi.org/10.19173/irrodl.v26i4.9020
- Boulhrir, T., & Ait Bouch, R. (2025). Sustainable development goals in elementary school education: Implications for curriculum integration and teacher education. Journal of Teacher Education for Sustainability, 27(1), 183–204. https://doi.org/10.2478/jtes-2025-0010
- Boulhrir, T., Hamash, M., & Ghreir, H. M. A. (2026). The Dual Edge of Large Language Models: Innovation in Education and Emerging Ethical Implications. In Innovations and Ethical Dimensions of Large Language Models (pp. 273-316). IGI Global Scientific Publishing. https://doi.org/10.4018/979-8-3373-5017-2.ch009
- Cheah, Y. H., Lu, J., & Kim, J. (2025). Integrating generative artificial intelligence in K–12 education: Examining teachers’ preparedness, practices, and barriers. Computers and Education: Artificial Intelligence, 8, Article 100363. https://doi.org/10.1016/j.caeai.2025.100363
- Chellanthara Jose, B., Ashok Kumar, M., UdayaBanu, T., & Nagalakshmi, M. (2024). Assessing the effectiveness of adaptive learning systems in K–12 education. International Journal of Advanced IT Research and Development, 1(1). https://doi.org/10.69942/1920184/20240101/02
- Divanji, R. A., Bindman, S., Tung, A., Chen, K., Castaneda, L., & Scanlon, M. (2023). A one stop shop? Perspectives on the value of adaptive learning technologies in K–12 education. Computers and Education Open, 5, Article 100157. https://doi.org/10.1016/j.caeo.2023.100157
- Global Education Monitoring Report Team. (2023). Global education monitoring report 2023: Technology in education: A tool on whose terms? UNESCO. https://doi.org/10.54676/UZQV8501
- Hamash, M., Ghreir, H., Tiernan, P., & Boulhrir, T. (2025). From NPCs to AI assistants: A scoping review of AI-driven agents in immersive STEM learning. In B. I. Edwards, H. Abuhassna, D. Olugbade, O. A. Ojo, & W. A. Jaafar Wan Yahaya (Eds.), Advances in computational intelligence and robotics (pp. 211–244). IGI Global. https://doi.org/10.4018/979-8-3373-0847-0.ch008
- Hamash, M., & Mohamed, H. (2021). BASAER team: The first Arabic robot team for building the capacities of visually impaired students to build and program robots. International Journal of Emerging Technologies in Learning (iJET), 16(24), 91–107. https://doi.org/10.3991/ijet.v16i24.27465
- Holmes, W., Bialik, M., & Fadel, C. (2023). Artificial intelligence in education. In C. Stückelberger & P. Duggal (Eds.), Data ethics: Building trust: How digital technologies can serve humanity (pp. 621–653). Globethics Publications. https://doi.org/10.58863/20.500.12424/4276068
- Huck, C., & Zhang, J. (2021). Effects of the COVID-19 pandemic on K–12 education: A systematic literature review. New Waves—Educational Research and Development Journal, 24(1), 53–84. https://eric.ed.gov/?id=EJ1308731
- Hwang, G.-J., Sung, H.-Y., Chang, S.-C., & Huang, X.-C. (2020). A fuzzy expert system-based adaptive learning approach to improving students’ learning performances by considering affective and cognitive factors. Computers and Education: Artificial Intelligence, 1, Article 100003. https://doi.org/10.1016/j.caeai.2020.100003
- Ihichr, A., Oustous, O., El Idrissi, Y. E. B., & Lahcen, A. A. (2024). A systematic review on assessment in adaptive learning: Theories, algorithms and techniques. International Journal of Advanced Computer Science & Applications, 15(7). https://doi.org/10.14569/IJACSA.2024.0150785
- Johnson, C. C., Walton, J. B., Strickler, L., & Elliott, J. B. (2023). Online teaching in K–12 education in the United States: A systematic review. Review of Educational Research, 93(3), 353–411. https://doi.org/10.3102/00346543221105550
- Katz, D., Huggins-Manley, A. C., & Leite, W. (2022). Personalized online learning, test fairness, and educational measurement: Considering differential content exposure prior to a high-stakes end of course exam. Applied Measurement in Education, 35(1), 1–16. https://doi.org/10.1080/08957347.2022.2034824
- Kim, S., Kim, J.-H., Hyung, W., Shin, S., Choi, M. J., Kim, D. H., & Im, C.-H. (2024). Characteristic behaviors of elementary students in a low attention state during online learning identified using electroencephalography. IEEE Transactions on Learning Technologies, 17(1), 619–628. https://doi.org/10.1109/TLT.2023.3289498
- Lamb, R., Neumann, K., & Linder, K. A. (2022). Real-time prediction of science student learning outcomes using machine learning classification of hemodynamics during virtual reality and online learning sessions. Computers and Education: Artificial Intelligence, 3, Article 100078. https://doi.org/10.1016/j.caeai.2022.100078
- Leite, W. L., Kuang, H., Jing, Z., Xing, W., Cavanaugh, C., & Huggins-Manley, A. C. (2022). The relationship between self-regulated student use of a virtual learning environment for algebra and student achievement: An examination of the role of teacher orchestration. Computers & Education, 191, Article 104615. https://doi.org/10.1016/j.compedu.2022.104615
- Li, C., Xing, W., Song, Y., & Lyu, B. (2025). RICE AlgebraBot: Lessons learned from designing and developing responsible conversational AI using induction, concretization, and exemplification to support algebra learning. Computers and Education: Artificial Intelligence, 8, Article 100338. https://doi.org/10.1016/j.caeai.2024.100338
- Luckin, R., Holmes, W., Griffiths, M., & Forcier, L. B. (2016). Intelligence unleashed: An argument for AI in education. Pearson. https://oro.open.ac.uk/50104/
- Maier, U., & Klotz, C. (2022). Personalized feedback in digital learning environments: Classification framework and literature review. Computers and Education: Artificial Intelligence, 3, Article 100080. https://doi.org/10.1016/j.caeai.2022.100080
- Martin, F., Chen, Y., Moore, R. L., & Westine, C. D. (2020). Systematic review of adaptive learning research designs, context, strategies, and technologies from 2009 to 2018. Educational Technology Research and Development, 68(4), 1903–1929. https://doi.org/10.1007/s11423-020-09793-2
- Maryono, D., Sajidan, Akhyar, M., Sarwanto, Wicaksono, B. T., & Prakisya, N. P. T. (2025). NgodingSeru.com: An adaptive e-learning system with gamification to enhance programming problem-solving skills for vocational high school students. Discover Education, 4(1), Article 157. https://doi.org/10.1007/s44217-025-00581-9
- Palliyalil, S., & Mukherjee, S. (2020). Byju’s the learning app: An investigative study on the transformation from traditional learning to technology-based personalized learning. International Journal of Scientific and Technology Research, 9(3), 5054–5059. https://www.researchgate.net/publication/342901964_Byju's_The_Learning_App_An_Investigative_Study_On_The_Transformation_From_Traditional_Learning_To_Technology_Based_Personalized_Learning
- Pardamean, B., Suparyanto, T., Cenggoro, T. W., Sudigyo, D., & Anugrahana, A. (2022). AI-based learning style prediction in online learning for primary education. IEEE Access, 10, 35725–35735. https://doi.org/10.1109/ACCESS.2022.3160177
- Poly, A., Banu, P. K. N., Althuniyan, N., Azar, A. T., & Kamal, N. A. (2025). Fuzzy logic approach to cold-start challenges in deaf and hard of hearing recommender systems. Engineering, Technology & Applied Science Research, 15(3), 23449–23460. https://doi.org/10.48084/etasr.10825
- Romero Alonso, R., Araya Carvajal, K., & Reyes Acevedo, N. (2024). Rol de la inteligencia artificial en la personalización de la educación a distancia: Una revisión sistemática [The role of artificial intelligence in personalizing distance education: A systematic review]. RIED–Revista Iberoamericana de Educación a Distancia, 28(1), 9–36. https://doi.org/10.5944/ried.28.1.41538
- Rundquist, R., Holmberg, K., Rack, J., Mohseni, Z., & Masiello, I. (2024). Use of learning analytics in K–12 mathematics education: Systematic scoping review of the impact on teaching and learning. Journal of Learning Analytics, 11(3), 174–191. https://doi.org/10.18608/jla.2024.8299
- Saif, A. F. M. S., Mahayuddin, Z. R., & Shapi’i, A. (2021). Augmented reality based adaptive and collaborative learning methods for improved primary education towards the fourth industrial revolution (IR 4.0). International Journal of Advanced Computer Science and Applications, 12(6), 614–623. https://doi.org/10.14569/IJACSA.2021.0120672
- Sancenon, V., Wijaya, K., Yue Shu Wen, X., Adi Utama, D., Ashworth, M., & Ng, K. H. (2022). A new Web-based personalized learning system improves students’ learning outcomes. International Journal of Virtual and Personal Learning Environments, 12(1), 1–21. https://doi.org/10.4018/IJVPLE.295306
- Shum, S. B., Ferguson, R., & Martinez-Maldonado, R. (2019). Human-centred learning analytics. Journal of Learning Analytics, 6(2), 1–9. https://doi.org/10.18608/jla.2019.62.1
- Tretow-Fish, T. A. B., & Khalid, M. S. (2023). Methods for evaluating learning analytics and learning analytics dashboards in adaptive learning platforms: A systematic review. Electronic Journal of e-Learning, 21(5), 430–449. https://doi.org/10.34190/ejel.21.5.3088
- Tricco, A. C., Lillie, E., Zarin, W., O’Brien, K. K., Colquhoun, H., Levac, D., Moher, D., Peters, M. D. J., Horsley, T., Weeks, L., Hempel, S., Akl, E. A., Chang, C., McGowan, J., Stewart, L., Hartling, L., Aldcroft, A., Wilson, M. G., Garritty, C., … Straus, S. E. (2018). PRISMA extension for scoping reviews (PRISMA-ScR): Checklist and explanation. Annals of Internal Medicine, 169(7), 467–473. https://doi.org/10.7326/M18-0850
- Wahyuningsih, Y., Djunaidy, A., & Siahaan, D. (2024). Concept–effect relationship weighting based on frequency of concept’s co-occurrence for developing personalized remedial learning path. IEEE Access, 12, 13878–13892. https://doi.org/10.1109/ACCESS.2024.3355138
- Wang, S., Christensen, C., McBride, E., Kelly, H., Cui, W., Tong, R., Shear, L., Yarnall, L., & Feng, M. (2020). Identifying gaps in use of and research on adaptive learning systems. In H. C. Lane, S. Zvacek, & J. Uhomoibhi (Eds.), Proceedings of the 12th International Conference on Computer Supported Education (Vol. 1, pp. 118–124). SciTePress: Science and Technology Publications. https://doi.org/10.5220/0009590701180124
- Yang, S., Carter, R. A., Zhang, L., & Hunt, T. (2021). Emergent themes of blended learning in K–12 educational environments: Lessons from the Every Student Succeeds Act. Computers & Education, 163, Article 104116. https://doi.org/10.1016/j.compedu.2020.104116
- Yang, Y., Song, Y., Yan, J., & Ma, Q. (2025). Bridging classroom and real-life learning mediated by a mobile app with a self-regulation scheme: Impacts on Chinese EFL primary students’ self-regulated vocabulary learning outcomes, enjoyment, and learning behaviours. System, 131, Article 103671. https://doi.org/10.1016/j.system.2025.103671
- Yim, I. H. Y., & Su, J. (2025). Artificial intelligence (AI) learning tools in K–12 education: A scoping review. Journal of Computers in Education, 12, 93–131. https://doi.org/10.1007/s40692-023-00304-9

