DS1 spectrogram: LLM Discussion: Enhancing the Creativity of Large Language Models via
  Discussion Framework and Role-Play

LLM Discussion: Enhancing the Creativity of Large Language Models via Discussion Framework and Role-Play

May 10, 20242405.06373

Authors

Shou-Jen Chen,Tsung-Min Pai,Chan-Hung Yu,Hung-yi Lee,Shao-Hua Sun

Abstract

Large language models (LLMs) have shown exceptional proficiency in natural language processing but often fall short of generating creative and original responses to open-ended questions. To enhance LLM creativity, our key insight is to emulate the human process of inducing collective creativity through engaging discussions with participants from diverse backgrounds and perspectives.

To this end, we propose LLM Discussion, a three-phase discussion framework that facilitates vigorous and diverging idea exchanges and ensures convergence to creative answers. Moreover, we adopt a role-playing technique by assigning distinct roles to LLMs to combat the homogeneity of LLMs.

We evaluate the efficacy of the proposed framework with the Alternative Uses Test, Similarities Test, Instances Test, and Scientific Creativity Test through both LLM evaluation and human study. The results show that our proposed framework outperforms single-LLM approaches and existing multi-LLM frameworks across various creativity metrics.

The code is available at https://github.com/lawraa/LLM-Discussion.

Resources

Stay in the loop

Every AI paper that matters, free in your inbox daily.

Details

  • © 2026 takara.ai Ltd
  • Content is sourced from third-party publications.