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Administrative AI Governance and Implementation Controls in US Higher Education Institutions

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Administrative AI Governance and Implementation Controls in US Higher Education Institutions

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성명

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도시 2026

목차

Abstract
Introduction
Chapter 1. Project Description and Governance Context
1.1 Defining the Administrative AI Landscape
1.2 Legal and Ethical Frameworks for Higher Education
Chapter 2. Implementation and Governance Controls
2.1 Infrastructure and Data Privacy Protocols
2.2 Algorithmic Accountability Mechanisms
2.3 Human-in-the-Loop Administrative Integration
Analysis
3.1 Assessing Operational Efficiency Gains
3.2 Risk Mitigation and Compliance Benchmarking
Chapter 4. Practical Recommendations and Rollout Priorities
4.1 Strategic Policy Development
Conclusion
Bibliography

서론

US higher education faces an unprecedented integration of algorithmic automation within core administrative functions. While student-facing generative tools dominate public discourse, the quiet migration of enrollment management, financial aid distribution, and human resource allocation toward automated decision systems (ADS) carries deeper structural implications. These technologies promise operational efficiency in an era of tightening fiscal constraints. However, the speed of adoption frequently outpaces the development of oversight mechanisms, leaving institutions vulnerable to technical and ethical lapses. A failure to synchronize innovation with regulation risks compromising the foundational trust between the university and its constituents. Current administrative landscapes often lack the specialized policy infrastructure required to manage algorithmic accountability. When predictive analytics determine student retention interventions or scholarship eligibility, the absence of transparent logic creates a "black box" effect that may inadvertently perpetuate systemic biases. This lack of visibility undermines the fiduciary and ethical responsibilities universities hold toward their stakeholders. Relying on vendor-provided assurances without independent verification represents a significant gap in contemporary institutional governance. Without rigorous internal controls, the university cedes its discretionary authority to proprietary code. Addressing these vulnerabilities requires a systematic approach to administrative AI governance. This project establishes a framework designed to calibrate technological utility against rigorous ethical compliance and data security standards. Central to this effort is an exhaustive audit of current usage patterns to identify where automation has already become entrenched. By developing a tiered governance framework, the research provides a method for categorizing AI applications based on their risk profile. This ensures that high-stakes decisions—those impacting student admissions or faculty tenure—receive the highest level of human oversight. The operationalization of this framework involves creating a specific risk-mitigation roadmap for ADS and designing training protocols for staff. Effective implementation depends on moving beyond static policy documents toward dynamic, iterative controls that evolve alongside the software. These protocols must bridge the gap between technical developers and non-technical administrators. Such a synthesis ensures that those responsible for institutional operations possess the literacy required to interrogate algorithmic outputs effectively. Moving toward this model of informed administration prevents the uncritical acceptance of machine-generated recommendations. A mixed-methods research design informs the development of these controls, utilizing both quantitative usage data and qualitative policy analysis. This dual approach allows for a granular understanding of how implementation controls function in diverse institutional contexts, from large public systems to private liberal arts colleges. By examining existing procurement contracts and internal data-handling procedures, the study identifies common points of failure in the current administrative lifecycle. These findings then serve as the empirical basis for the proposed governance schema. Establishing robust governance serves both theoretical and practical imperatives. Theoretically, it redefines the concept of algorithmic stewardship within the academy, positioning the university as a critical arbiter of technological ethics. Practically, it provides a replicable model for maintaining institutional integrity amidst rapid digital transformation. As institutions navigate the pressure to innovate, this roadmap ensures that efficiency does not come at the expense of equity or procedural justice. The resulting equilibrium protects the university’s mission while embracing the advantages of the digital age.

참고문헌

  1. Integration of Artificial Intelligence in The Higher Education Institutions (2025)
    Fayziyeva Nigora Nurmuhammedovna
    DOI 링크
  2. Benefits, Threats, and Mitigation Strategies of Artificial Intelligence in Higher Education: A Narrative Literature Review (2025)
    Ashiraf Mabanja, Muhamadi Kaweesi, Maimuna AMINAH NIMULOLA et al.
    DOI 링크
  3. Legal Capacity of Higher Education Institutions and Artificial Intelligence: Issues of Implementation (2025)
    V. Karpunets
    DOI 링크
  4. Considerations When Choosing Artificial Intelligence to Meet Business Needs in Higher Education Institutions (2022)
    Dawn Coder, Meng Su, Ryan Wellar
  5. The Artificial Intelligence(AI) Enabled Governance Framework for NIRF Ranking Improvement of Higher Education Institutions (2026)
    C.R.S. Kumar
  6. Methodological Approaches to the Implementation of Artificial Intelligence in the Educational Process of Higher Education Institutions (2025)
    Valeriia Pavlova
  7. Analysis of the Impact of Generative Artificial Intelligence on Research Integrity Governance in Jiangsu Higher Education Institutions (2025)
    Tiantian Zhou, Wen Xin, Liting Lu et al.
  8. Digital Transformation in Higher Education: Artificial Intelligence Tools, Pedagogical Practice, and Data Literacy Development (2025)
    Tessa T. Taefi, L. Lou, D. Reddy et al.

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