Ethics and Accountability of Artificial Intelligence in Contemporary Higher Education
Vista previa del documento
Esta es una vista previa breve. La versión completa incluye texto ampliado para todas las secciones, una conclusión y una bibliografía formateada.
Referat
Autor/a:
Group
Nombre Apellidos
Tutor/a:
Nombre Apellidos
Contenido
Introducción
University ecosystems face an unprecedented challenge as generative models and predictive analytics move from experimental tools to foundational infrastructure. This rapid integration occurs while traditional academic governance remains tethered to pre-digital standards of intellectual property and student evaluation. Market pressures often drive institutions toward early adoption to maintain a competitive edge, yet this haste frequently bypasses the rigorous ethical vetting required for transformative technologies. Consequently, the speed of implementation creates a vacuum where institutional policy struggles to define the boundaries between collaborative AI assistance and fundamental academic dishonesty. Ethical concerns extend beyond surface-level plagiarism to encompass the systemic obfuscation of data provenance in research and instruction. When large language models synthesize existing scholarship, they frequently sever the link between an idea and its original creator, undermining the citation-based meritocracy that sustains higher education. This erosion of transparency necessitates a radical re-evaluation of how academic labor is valued and verified. If the process of knowledge production becomes an opaque "black box," the foundation of scientific reproducibility and the integrity of the peer-review process are both threatened. Inherent biases within training datasets also risk codifying historical inequities into new pedagogical tools, potentially marginalizing specific student demographics under the guise of objective automation. Accountability structures, particularly those managed by regional accreditation bodies, currently lack the technical granularity required to audit AI implementation effectively. Standardized metrics for quality assurance rarely account for the ethical risks of automated grading or the long-term privacy implications of student data harvesting by third-party vendors. Bridging this gap requires moving beyond vague, non-binding guidelines toward enforceable standards of algorithmic transparency. Institutions that prioritize technological prestige over these safeguards risk not only legal liability but the lasting devaluation of their intellectual capital. The tension between proprietary corporate interests and the university's mandate for open, public-facing inquiry remains a central point of friction in these governance debates. This analysis contends that existing ethical frameworks are largely reactionary and insufficient for the current scale of the AI transition. By scrutinizing the intersection of pedagogical integrity and corporate-driven technology, the text evaluates the specific mechanisms through which accountability can be restored. The discourse moves from defining ethical risks in classroom settings to analyzing the systemic role of oversight agencies, ultimately proposing a model for governance that preserves the human-centric core of higher learning while embracing the efficiencies of machine intelligence.
Bibliografía
- Integration of generative artificial intelligence into higher education research as a supporting tool: A balance between innovation and ethics in research (2025)S. Muchaku, H. Kabiti, B. NthambeleniEnlace DOI
- AI and ethics: Investigating the first policy responses of higher education institutions to the challenge of generative AI (2024)Attila Dabis, C. CsákiCódigo abierto
- Leveraging Artificial Intelligence Tools for Learning (2024)Edwin Okumu Ogalo, Fredrick MtenziEnlace DOI
- The Role of Artificial Intelligence in Transforming Higher Education – Institutional Policies and Regulations: Ethics and Guidelines (2024)Andone, Diana
- Fairness, Accountability, Transparency, and Ethics (FATE) in Artificial Intelligence (AI) and higher education: A systematic review (2023)Bahar Memarian, Tenzin Doleck
- Unveiling the Potential: Artificial Intelligence's Negative Impact on Teaching and Research Considering Ethics in Higher Education (2025)Muhammad Amin Nadim, Raffaele Di Fuccio
- A meta systematic review of artificial intelligence in higher education: a call for increased ethics, collaboration, and rigour (2024)M. Bond, Hassan Khosravi, Maarten de Laat et al.
- Ethics and Transparency in AI, Transparency, and Accountability in Higher Education (2025)Dr. Shakeel Ahmed, Dawar Awan, Muhammad Adil et al.
- Balancing Empowerment and Discipline: A Study of the Normative Framework for the Use of Artificial Intelligence Tools by University Faculty and Students (2025)Fu Chun, Linjie Xu, Ruiheng Fang et al.
- Managing Artificial Intelligence Ethics in Higher Education: A Systematic Framework for Issues and Policy Recommendations (2025)Ismail Kasarci, Zeynep Akın Demircan, Gülçin Çeliker Ercan et al.
- Balancing Innovation and Ethics: The Controversy of Artificial Intelligence in Higher Education Policy Management (2024)Rizkiyah Hasanah, Izzatul Munawwaroh, Chanda Chansa Thelma
- Ethics and Privacy in Irish Higher Education: A Comprehensive Study of Artificial Intelligence (AI) Tools Implementation at University of Limerick (2023)M. Irfan, Fahad Aldulaylan, Y. Alqahtani
- Artificial Intelligence and Ethics: Public Perceptions, Social Impact, and Policy Challenges in Contemporary Society (2025)Dr. Vikas Nandal
- Ethics of Artificial Intelligence, Higher Education, and Scientific Research (2023)Fatima Roumate
- Navigating the Ethical Challenges of Artificial Intelligence in Higher Education: An Analysis of Seven Global AI Ethics Policies (2023)Zouhaier Slimi, Beatriz, Villarejo Carballido
Bibliografía
Referat
APA 7ª Edición (adaptado)