Tzu-Hsuan Wu


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2025

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Creativity in LLM-based Multi-Agent Systems: A Survey
Yi-Cheng Lin | Kang-Chieh Chen | Zhe-Yan Li | Tzu-Heng Wu | Tzu-Hsuan Wu | Kuan-Yu Chen | Hung-yi Lee | Yun-Nung Chen
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

Large language model (LLM)-driven multi-agent systems (MAS) are transforming how humans and AIs collaboratively generate ideas and artifacts. While existing surveys provide comprehensive overviews of MAS infrastructures, they largely overlook the dimension of creativity, including how novel outputs are generated and evaluated, how creativity informs agent personas, and how creative workflows are coordinated. This is the first survey dedicated to creativity in MAS. We focus on text and image generation tasks, and present:(1) a taxonomy of agent proactivity and persona design;(2) an overview of generation techniques, including divergent exploration, iterative refinement, and collaborative synthesis, as well as relevant datasets and evaluation metrics; and(3) a discussion of key challenges, such as inconsistent evaluation standards, insufficient bias mitigation, coordination conflicts, and the lack of unified benchmarks.This survey offers a structured framework and roadmap for advancing the development, evaluation, and standardization of creative MAS.