Litcius/Paper detail

Shaping Human-AI Collaboration: Varied Scaffolding Levels in Co-writing with Language Models

Paramveer S. Dhillon, Somayeh Molaei, Jiaqi Li, Maximilian Golub, Shaochun Zheng, Lionel Robert

202485 citationsDOIOpen Access PDF

Abstract

Advances in language modeling have paved the way for novel human-AI co-writing experiences. This paper explores how varying levels of scaffolding from large language models (LLMs) shape the co-writing process. Employing a within-subjects field experiment with a Latin square design, we asked participants (N=131) to respond to argumentative writing prompts under three randomly sequenced conditions: no AI assistance (control), next-sentence suggestions (low scaffolding), and next-paragraph suggestions (high scaffolding). Our findings reveal a U-shaped impact of scaffolding on writing quality and productivity (words/time). While low scaffolding did not significantly improve writing quality or productivity, high scaffolding led to significant improvements, especially benefiting non-regular writers and less tech-savvy users. No significant cognitive burden was observed while using the scaffolded writing tools, but a moderate decrease in text ownership and satisfaction was noted. Our results have broad implications for the design of AI-powered writing tools, including the need for personalized scaffolding mechanisms.

Topics & Concepts

ScaffoldParagraphArgumentativeProductivityComputer scienceWriting processQuality (philosophy)SentenceSecond language writingPsychologyMathematics educationLinguisticsArtificial intelligenceSecond languageWorld Wide WebMacroeconomicsDatabasePhilosophyEconomicsEpistemologyTopic ModelingAI in Service InteractionsArtificial Intelligence in Healthcare and Education