Ethics and Accountability of Artificial Intelligence in Contemporary Higher Education
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The rapid assimilation of generative models into university ecosystems has outpaced the development of governing frameworks. While these technologies promise to revolutionize personalized instruction, their deployment often occurs without sufficient consideration for the long-term implications of automated decision-making. This tension defines the current state of academic technology. Institutional reliance on proprietary software frequently obscures the logic behind student evaluations and resource allocation. Such "black box" systems present a direct challenge to the transparency required in public-facing educational bodies. When algorithms dictate academic outcomes, the traditional mechanisms of appeal and verification become strained. A robust information ethics paradigm must move beyond mere compliance to address the systemic biases inherent in large-scale data processing. The evidence suggests that current accreditation standards remain ill-equipped to handle the nuances of machine learning in learning environments. This regulatory vacuum allows for the unchecked proliferation of tools that may inadvertently reinforce historical prejudices or compromise student privacy. Addressing these vulnerabilities requires more than technical patches; it demands a fundamental reassessment of what constitutes academic accountability in a digital-first era. Ethical compliance is not a barrier to innovation but a prerequisite for maintaining public trust in the university system. The following inquiry maps the current terrain of digital ethics before scrutinizing specific policy failures within contemporary university governance. By examining the friction between rapid technological adoption and the slow pace of institutional reform, the work identifies strategies to reconcile pedagogical goals with ethical mandates. These findings lead to a proposed framework designed to ensure that innovation does not come at the expense of equity or integrity. The focus remains on establishing a sustainable balance between the drive for efficiency and the preservation of the university’s moral mission. Through a synthesis of technical auditing and pedagogical reflection, this analysis provides a blueprint for responsible technological stewardship.
참고문헌
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- 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.
- Ethics and Transparency in AI, Transparency, and Accountability in Higher Education (2025)Dr. Shakeel Ahmed, Dawar Awan, Muhammad Adil et al.
- 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.
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APA 7th Edition