NarrativeLoom: Enhancing Creative Storytelling through Multi-Persona Collaborative Improvisation

要旨

Large Language Models show promise for AI-assisted storytelling, yet current tools often generate predictable, unoriginal narratives. To address this limitation, we present NarrativeLoom, a multi-persona co-creative system grounded in Campbell's Blind Variation and Selective Retention theory. NarrativeLoom deploys specialized Artificial Intelligence (AI) personas to generate diverse narrative options (blind variation), while users act as creative directors to select and refine them (selective retention). We designed a controlled study with 50 participants and found that stories co-authored with NarrativeLoom were not only perceived by users as more novel and diverse but were also objectively rated by experts as significantly better across all Torrance Test creativity dimensions: fluency, flexibility, originality, and elaboration. Stories are significantly longer with richer settings and more dialogue. Writing expertise emerged as a moderator: novices benefited more from structured scaffolding. This demonstrates the value of theory-informed co-creative systems and the importance of adapting them to varying user expertise. Project page: https://ppyyqq.github.io/narrativeloom.

著者
Yuxi Ma
Peking University, Beijing, China
Yongqian Peng
Peking University, Beijing, China
Fengyuan Yang
Peking University, Beijing, China
Siyu Zha
Tsinghua University, Beijing, China
Chi Zhang
Beijing Institute for General Artificial Intelligence, Beijing, China
Zixia Jia
Beijing Institute for General Artificial Intelligence, Beijing, China
Zilong Zheng
Beijing Institute for General Artificial Intelligence, Beijing, China
Yixin Zhu
Peking University, Beijing, China

会議: CHI 2026

ACM CHI Conference on Human Factors in Computing Systems

セッション: Multi-Agent Reasoning Systems for Sensemaking and Planning

P1 - Room 134
7 件の発表
2026-04-17 18:00:00
2026-04-17 19:30:00