The Responsible Development of Automated Student Feedback with Generative AI
Euan D Lindsay, Mike Zhang, Aditya Johri, Johannes Bjerva

TL;DR
This paper discusses the potential and challenges of using generative AI, especially large language models, to provide scalable, personalized, and responsible feedback in education, emphasizing ethical considerations and inclusivity.
Contribution
It introduces a framework for responsible development of AI-driven student feedback, addressing ethical, inclusivity, and continuous refinement challenges.
Findings
AI can deliver scalable, instant feedback to students.
Ensuring inclusivity and ethical use is critical in AI feedback systems.
Ongoing model refinement is necessary for relevance and effectiveness.
Abstract
Providing rich, constructive feedback to students is essential for supporting and enhancing their learning. Recent advancements in Generative Artificial Intelligence (AI), particularly with large language models (LLMs), present new opportunities to deliver scalable, repeatable, and instant feedback, effectively making abundant a resource that has historically been scarce and costly. From a technical perspective, this approach is now feasible due to breakthroughs in AI and Natural Language Processing (NLP). While the potential educational benefits are compelling, implementing these technologies also introduces a host of ethical considerations that must be thoughtfully addressed. One of the core advantages of AI systems is their ability to automate routine and mundane tasks, potentially freeing up human educators for more nuanced work. However, the ease of automation risks a ``tyranny of…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Engineering Education and Technology · Online Learning and Analytics
