Ethical Integration of Generative AI in Higher Education
Rethinking Assessment
DOI:
https://doi.org/10.55420/2693.9193.v16.n2.365Keywords:
generative artificial intelligence, higher education, assessment, academic integrity, instructional designAbstract
The rapid development of generative artificial intelligence (AI) technologies has introduced profound transformations in higher education, particularly in online learning environments where digital technologies already mediate teaching and learning processes. Large language models and other generative systems now allow users to produce sophisticated written responses, raising new pedagogical opportunities as well as ethical concerns regarding authorship, academic integrity, and the design of meaningful assessments. This article examines the ethical integration of generative AI in online higher education and explores how assessment practices must evolve to remain pedagogically relevant and ethically grounded. Drawing on interdisciplinary scholarship on artificial intelligence, ethics, and higher education, the paper analyzes emerging tensions between traditional assessment models and AI-supported learning environments. In particular, it examines ethical principles such as transparency, accountability, autonomy, and fairness that should guide the integration of AI technologies in educational contexts. The article further proposes practical strategies for redesigning assessments in ways that emphasize authentic learning, reflective processes, and responsible AI engagement. These strategies include process-based evaluation, authentic assessment design, iterative assignments, and explicit AI-use disclosures. By reframing assessment as a reflective and participatory process rather than a static evaluation of final products, educators can maintain academic rigor while preparing students to navigate increasingly AI-mediated knowledge ecosystems. Ultimately, the article contributes to ongoing scholarly discussions about ethical innovation in higher education and offers practical guidance for educators and instructional designers seeking to integrate generative AI responsibly within online learning environments.
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