ArXiv TLDR

Co-Writing with AI: An Empirical Study of Diverse Academic Writing Workflows

🐦 Tweet
2604.25389

Silvia Bodei, Duncan P. Brumby, Katie Fisher, Jon Mella

cs.HCcs.AI

TLDR

This study reveals how university students integrate AI into academic writing, identifying three distinct, value-oriented workflow configurations.

Key contributions

  • Surveyed 107 students on AI use patterns across five academic writing stages.
  • Interviewed 12 postgraduates on established AI integration in assessed writing.
  • Identified three distinct AI writing workflows: early-stage (learning), late-stage (quality), and peripheral (productivity).
  • Explores how students navigate learning, quality, productivity, and authorship with AI tools.

Why it matters

This paper offers crucial empirical insights into how university students actually integrate AI into academic writing, moving beyond speculation. It reveals diverse workflow strategies and the complex trade-offs students make regarding learning, quality, and authorship. These findings are vital for educators and AI tool developers to foster effective and responsible AI use.

Original Abstract

Despite AI tools becoming increasingly embedded in academic practice, little is known about how university students integrate them into their writing processes. We examine how students engage with AI across different writing tasks, and how this engagement is shaped by individual factors including AI literacy, writing confidence, trust, authorship concerns, and motivation. Study~1 surveys 107 UK university students to map task-specific and co-occurring patterns of AI use across five writing stages (ideation, sourcing, planning, drafting, and reviewing) and their associations with individual factors. Study~2 complements this by exploring how these patterns can be assembled in practice, through interviews with 12 postgraduates reflecting on their established use of AI in assessed writing. Together, the studies suggest that AI integration is selective and heterogeneous, forming three recurring and value-oriented configurations: (1) early-stage (learning-oriented), where tools support exploration and understanding; (2) late-stage (quality-oriented), where tools support drafting and refinement; and (3) peripheral (productivity-oriented), where tools are used to reduce friction and sustain momentum across the process. We offer a workflow-level account of AI-supported academic writing, showing how students navigate competing priorities of learning, quality, productivity, and authorship, and how they evaluate and take responsibility for AI-generated outputs.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.