Template-Type: ReDIF-Article 1.0 Author-Name: Irene O. Mamites Author-X-Name-First: Irene O. Author-X-Name-Last: Mamites Author-Name: Jose Maria S. Garcia II Author-X-Name-First: Jose Maria S. Garcia Author-X-Name-Last: II Author-Name: Gibe S. Tirol Author-X-Name-First: Gibe S. Author-X-Name-Last: Tirol Author-Name: Nelson F. Nolon Author-X-Name-First: Nelson F. Author-X-Name-Last: Nolon Author-Name: Joy M. Olarte Author-X-Name-First: Joy M. Author-X-Name-Last: Olarte Author-Name: Ulysis D. Malait Author-X-Name-First: Ulysis D. Author-X-Name-Last: Malait Author-Name: Melanie M. Himang Author-X-Name-First: Melanie M. Author-X-Name-Last: Himang Title: AI in sustainable higher education: an interpretive structural model and MICMAC approach Abstract: Integrating artificial intelligence (AI) in sustainable higher education practices prove to be beneficial in the teaching and learning process of institutions. With the many probable practices which promote sustainability in higher education, stakeholders must be able to proactively prioritise practices given the lack of resources for the full-blown implementation of sustainable higher education practices. Along this line, this paper employs interpretive structural modelling (ISM) with MICMAC analysis to generate a framework for stakeholders to use in prioritising such practices. A real-life case study in a state university in the Philippines is conducted to understand how AI is integrated in sustainable higher education. Interestingly, the framework points out data collection monitoring systems as the core practice to be tackled by educational institutions. Journal: Int. J. of Business and Globalisation Pages: 1-22 Issue: 1 Volume: 42 Year: 2026 Keywords: artificial intelligence; sustainable higher education; interpretive structural modelling; ISM; MICMAC analysis; state university. File-URL: http://www.inderscience.com/link.php?id=151997 File-Format: text/html File-Restriction: Open Access Handle: RePEc:ids:ijbglo:v:42:y:2026:i:1:p:1-22