AUTHOR=Buniel John Manuel , Intano Juancho , Cuartero Odinah , Grustan Kenny John , Sumaoy Roey , Reyes Noel , Calipayan Jose , Arreo Rhodora , Duero Dione , Rosil Ivilyn , Agustin Shypres , Diron Trisha Jane , Pingol Raiya Jocella , Sapuras Jean Vanessa , Miranda Kimberly , Julve Jesseca , Josol Marinel , Mercado Kyla Rita , Latoja Liziel , Cubillan Jasmine , Fallado Pearl A. J. , Duran Elvie Lyka , Ambray Francis Isidore , Miranda Myriflor , Etchon Fae Mylene , Ramoso Mia Melody , Rubenial Jehu Roeh , Ganancias Franklin , Orozco Loth , Gracia Joel , Notado Necie , Darao Geraldine , Cortes Sylvester TITLE=Modeling the influence of AI dependence to research productivity among STEM undergraduate students: case of a state university in the Philippines JOURNAL=Frontiers in Education VOLUME=Volume 10 - 2025 YEAR=2025 URL=https://www.frontiersin.org/journals/education/articles/10.3389/feduc.2025.1535466 DOI=10.3389/feduc.2025.1535466 ISSN=2504-284X ABSTRACT=STEM fields—Science, Technology, Engineering, and Mathematics—play crucial roles in advancing knowledge, driving innovation, and addressing challenges by means of several mechanisms including research. Consequently, STEM curricula in higher education institutions prepare undergraduate students taking these fields to engage and produce quality research outputs in preparation for their future careers or roles. The advent of several educational resources help these students to perform research-related tasks including artificial intelligence. Although AI use is viewed as inappropriate in doing scholarly works due to concerns about academic integrity and the fear of losing essential cognitive skills, the growing AI dependence among STEM undergraduate students is inevitable. In this regard, the present study seeks to empirically investigate the influence AI dependence toward students’ research productivity, and the mediating roles of research skills, disposition, and self-efficacy. Through literature review, a structural model was proposed and validated. Initially, a research instrument was developed reflective of the constructs present in the structural model where items were also generated using literature review. Eventually, an online survey was conducted and recorded 834 valid responses from STEM undergraduate students. Results revealed that from seven hypotheses proposed in the structural model, six are supported except the causal path between AI dependence and research productivity. The paths between AI dependence to research skills, dispositions, and self-efficacy are supported as well as the paths between these three to research productivity. This indicates the mediation of research skills, dispositions, and self-efficacy between the causal path linking AI dependence to research productivity. The findings of this study imply that strategic integration of AI resources may foster not only skills development but also research motivation and confidence, which together could enhance students’ overall research productivity in STEM fields.