Analyzing Factors Affecting the Transformation of the University Policy-Making System with an Artificial Intelligence Development Approach in Golestan Province Universities

Authors

    Zahra Afsari PhD student, Department of Public Administration, Sar.C., Islamic Azad University, Sari, Iran
    Ghasem Ali Talebi * Department of Educational Management, Sar.C., Islamic Azad University, Sari, Iran ghasemali.taleb@iau.ac.ir
    Seyed Mohammad Hossein Hashemi Nasab Department of Public Administration, Sar.C., Islamic Azad University, Sari, Iran

Keywords:

University Policy-Making, Artificial Intelligence, Data-Driven Decision-Making, Golestan Province Universities

Abstract

The present study aimed to analyze and explain the factors influencing the transformation of the university policy-making system based on artificial intelligence development and to present an empirically grounded conceptual model in Golestan province universities. This study was applied in purpose and qualitative in nature and was conducted using the grounded theory approach. The research population consisted of academic experts in university policymaking and emerging technologies in Golestan province universities. Participants were selected through purposive and theoretical sampling, and a total of 11 experts, including university presidents, educational and research deputies, planning managers, and faculty members familiar with emerging technologies, participated in the study. Data were collected through in-depth semi-structured interviews and analyzed concurrently with data collection. The data analysis process followed three stages: open coding, axial coding, and selective coding. To enhance the trustworthiness of the findings, repeated data review, conceptual consistency checks, and direct linkage between codes and raw interview data were ensured. Data analysis resulted in the identification of 75 open codes, which were categorized into two axial categories: “data-driven decision-making” (58.6%) and “increasing managerial transparency and accuracy” (41.4%). These two categories collectively formed the central phenomenon of “transformation in the university policy-making system.” The findings indicated that artificial intelligence enables the transition from traditional, intuition-based policymaking toward evidence-based policymaking by facilitating predictive analytics, improving evaluation accuracy, enhancing organizational justice, and reducing reliance on subjective judgments. Furthermore, a reinforcing relationship was identified between data-driven decision-making and managerial transparency, whereby increased reliance on data improves transparency and accountability, and greater transparency further strengthens data-oriented decision processes. The transformation of the university policy-making system through artificial intelligence represents a fundamental paradigm shift from static, subjective, and traditional policymaking toward dynamic, evidence-based, and forward-looking governance. This transformation enhances decision quality, promotes fairness and transparency, strengthens coordination among organizational units, and improves overall institutional effectiveness. The findings emphasize that the development of data infrastructure, managerial analytical capabilities, and regulatory mechanisms are critical prerequisites for achieving sustainable transformation. Implementing these elements can facilitate the emergence of an intelligent, adaptive, and effective university policy-making system capable of responding to complex and evolving organizational and societal demands.

Downloads

Download data is not yet available.

References

Alvani, S. M. (2022). Decision Making and Public Policy Determination. Samt.

Baki Hashemi, S. M. M. (2024). Analyzing the Policy Dimensions of Employing Artificial Intelligence in Iran's Health System. Management of Government Organizations, 12(2 (46)), 181-204. https://www.magiran.com/paper/2763980/analyzing-the-policy-dimensions-of-using-artificial-intelligence-in-iran-s-health-system?lang=en

Bunbury-Thomas, A. (2025). Public Policy and Trust in Artificial Intelligence Decision Making Walden University]. USA. https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=19003&context=dissertations

Hisham, A. A. B., Yusof, N. A. M., Salleh, S. H., & Abas, H. (2024). Transforming governance: A systematic review of AI applications in policymaking. Journal of Science, Technology and Innovation Policy, 10(1), 7-15. https://doi.org/10.11113/jostip.v10n1.148

Ifenthaler, D., Majumdar, R., Gorissen, P., Judge, M., Mishra, S., Raffaghelli, J., & Shimada, A. (2024). Artificial Intelligence in Education: Implications for Policymakers, Researchers, and Practitioners. Tech Know Learn. https://doi.org/10.1007/s10758-024-09747-0

Kotsis, K. Τ. (2025). Artificial Intelligence for Physics Education in STEM Classrooms: A Narrative Review Within a Pedagogy Technology Policy Framework. Sch. Jo. Phs. Ed, 6(3), 204-211. https://doi.org/10.37251/sjpe.v6i3.2148

Mahbanooei, B., & Pourezzat, A. A. (2022). A Guide to Human Capital Educational Policymaking: An Importance-Performance Analysis for Iran. Quarterly Journal of Educational Planning Studies, 11(22), 1-22. https://eps.journals.umz.ac.ir/article_4204.html?lang=en

Monavarian, A., Sadeghi, J., & Pirannejad, A. (2023). A Policy-making Framework for the Application of Artificial Intelligence Systems in the Urban Domain Using a Meta-synthesis Approach. Public Management, 15(3), 512-552. https://jipa.ut.ac.ir/article_94429.html?lang=en

Moslemi, N., Hamidzadeh, A., & Khanifar, H. (2021). Presenting a Model of Educational Policymaking Based on a Behavioral Approach in the Field of Skills Training in Iran: A Qualitative Study. Quarterly Journal of Educational and School Studies, 10(3), 361-382. https://pma.cfu.ac.ir/article_1892.html?lang=en

Ozkaya, G., & Demirhan, A. (2023). Analysis of Countries in Terms of Artificial Intelligence Technologies: PROMETHEE and GAIA Method Approach. Sustainability, 15(5).

Roberts, A. B. (2024). The Role of Artificial Intelligence in Schools: A Case of Policy Formation. Journal of Cases in Educational Leadership. https://doi.org/10.1177/15554589241299320

Sabouri, H., Givarian, H., & Hagh Shenas Kashani, F. (2021). Identifying the Dimensions and Components of the Optimal Policymaking Process Model in Iran's Education System. Quarterly Journal of Education, 37(1), 7-32. https://qjoe.ir/article-1-2967-en.html

Selvaratnam, R., & Venaruzzo, L. (2023). Governance of artificial intelligence and data in Australasian higher education: A snapshot of policy and practice. In Australasian Council on Open, Distance and eLearning. https://doi.org/10.14742/apubs.2023.717

Sheikh Shoaee, H. (2021). Challenges, Roles, and Policy-Making of Artificial Intelligence Research in Education. Third Conference on Management, Tourism, and Technology, Malaysia.

Shirvani Naghani, M., Koolivand, K., Ejabi, E., & Heidari, M. (2024). Drawing Scenarios for the National Information Network of the Islamic Republic of Iran on the Horizon of 2028 with an Emphasis on Security Consequences. Majlis and Rahbord, 31(120). https://www.magiran.com/paper/2834591/outlining-scenarios-for-the-national-information-network-of-the-islamic-republic-of-iran-by-2028-with-emphasis-on-security-implications?lang=en

Downloads

Published

2026-04-21

Submitted

2025-10-02

Revised

2026-02-10

Accepted

2026-02-17

Issue

Section

مقالات

How to Cite

Afsari, Z. ., Talebi, G. A., & Hashemi Nasab , S. M. H. (1405). Analyzing Factors Affecting the Transformation of the University Policy-Making System with an Artificial Intelligence Development Approach in Golestan Province Universities. Intelligent Learning and Management Transformation, 1-19. https://jilmt.com/index.php/jilmt/article/view/146

Similar Articles

1-10 of 108

You may also start an advanced similarity search for this article.