CYAIETHCNov 19, 2025

Writing With Machines and Peers: Designing for Critical Engagement with Generative AI

arXiv:2511.15750v13 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem of uncritical AI adoption in higher education writing instruction with an incremental pedagogical model.

This study tackled the challenge of helping students use generative AI critically in academic writing by designing a pedagogical approach that integrated AI and peer feedback in a graduate-level literature review project over eight weeks, finding that students relied on AI for rubric alignment and surface edits while using peer feedback for conceptual development and disciplinary relevance.

The growing integration of generative AI in higher education is transforming how students write, learn, and engage with knowledge. As AI tools become more integrated into classrooms, there is an urgent need for pedagogical approaches that help students use them critically and reflectively. This study proposes a pedagogical design that integrates AI and peer feedback in a graduate-level academic writing activity. Over eight weeks, students developed literature review projects through multiple writing and revision stages, receiving feedback from both a custom-built AI reviewer and human peers. We examine two questions: (1) How did students interact with and incorporate AI and peer feedback during the writing process? and (2) How did they reflect on and build relationships with both human and AI reviewers? Data sources include student writing artifacts, AI and peer feedback, AI chat logs, and student reflections. Findings show that students engaged differently with each feedback source-relying on AI for rubric alignment and surface-level edits, and on peer feedback for conceptual development and disciplinary relevance. Reflections revealed evolving relationships with AI, characterized by increasing confidence, strategic use, and critical awareness of its limitations. The pedagogical design supported writing development, AI literacy, and disciplinary understanding. This study offers a scalable pedagogical model for integrating AI into writing instruction and contributes insights for system-level approaches to fostering meaningful human-AI collaboration in higher education.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes