Ethical AI in Education: Principles, Governance, and Responsible Implementation

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Видавець

Pedagogy and Education Management Review

Анотація

Artificial intelligence is increasingly embedded in education through learning analytics, adaptive learning systems, automated feedback, proctoring, student support chatbots, and generative AI tools, with implications for how decisions are justified and how responsibility is distributed. The paper aims to articulate domain-specific ethical AI principles for education that protect learner rights, reinforce equity, and preserve the integrity of assessment while enabling responsible innovation. A structured narrative review and normative synthesis are used to integrate AI ethics and governance guidance with AI-in-education research, then translate these insights into implementable principles and lifecycle governance mechanisms. The analysis shows that generic AI ethics statements are insufficient without pedagogical grounding, because educational quality depends on developmental, relational, and legitimacy conditions that are not captured by technical metrics alone. The resulting framework prioritizes human-centered educational benefit, learner agency with meaningful oversight, fairness and inclusion, privacy and data minimization, transparency proportional to decision impact, safety and well-being protections, academic integrity by design, and accountability with remedy in high-impact uses. Ethical AI in education requires institutional governance that connects values to procurement, deployment, classroom practice, monitoring, and evaluation across the AI lifecycle. Future work should strengthen measurement frameworks and empirical evidence for safeguarded AI use in high-stakes contexts, and examine implementation capacity in procurement, training, and post-deployment monitoring.

Опис

Artificial intelligence is increasingly embedded in education through learning analytics, adaptive learning systems, automated feedback, proctoring, student support chatbots, and generative AI tools, with implications for how decisions are justified and how responsibility is distributed. The paper aims to articulate domain-specific ethical AI principles for education that protect learner rights, reinforce equity, and preserve the integrity of assessment while enabling responsible innovation. A structured narrative review and normative synthesis are used to integrate AI ethics and governance guidance with AI-in-education research, then translate these insights into implementable principles and lifecycle governance mechanisms. The analysis shows that generic AI ethics statements are insufficient without pedagogical grounding, because educational quality depends on developmental, relational, and legitimacy conditions that are not captured by technical metrics alone. The resulting framework prioritizes human-centered educational benefit, learner agency with meaningful oversight, fairness and inclusion, privacy and data minimization, transparency proportional to decision impact, safety and well-being protections, academic integrity by design, and accountability with remedy in high-impact uses. Ethical AI in education requires institutional governance that connects values to procurement, deployment, classroom practice, monitoring, and evaluation across the AI lifecycle. Future work should strengthen measurement frameworks and empirical evidence for safeguarded AI use in high-stakes contexts, and examine implementation capacity in procurement, training, and post-deployment monitoring.

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ISSN

2733-2039
2733-2144

Ключові слова

ethical AI, education governance, learner rights, transparency, explainability, fairness, privacy, academic integrity, accountability, generative AI, risk management, child centered design

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