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EvoSci: A Bio-Inspired Multi-Agent Framework for the Evolution of Scientific Discovery

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Large language models (LLMs), have shown strong potential in scientific discovery, yet existing methods still face substantial challenges in the design of research workflows and multi-role collaboration mechanisms. To mitigate these issues, we propose EvoSci, a multi-agent scientific collaboration framework, which integrates bio-inspired evolution with knowledge graph modeling. To iteratively generate, evaluate, and refine research ideas, EvoSci incorporates multiple role-based agents, including mentor, researcher, and reviewer. By combining collaborative reasoning, shared memory, and evolutionary feedback, EvoSci significantly enhances the coherence and creativity of scientific exploration. Experiments on real-world research topics demonstrate that EvoSci significantly outperforms strong baselines in LLM-based structured peer-review and comparative ranking evaluations, achieving the highest overall peer-review score (ICLR 4.90) and top ranking (Top-10 = 54). These results suggest its superiority in both scientific idea generation and continuous discovery.

Xiaoyu Xiong, Yuqi Ren, Deyi Xiong• 2026

Related benchmarks

TaskDatasetResultRank
Research Idea GenerationTen benchmark topics (100 generated research ideas)
Average Wins4.27
15
Subjective evaluation of research ideas100 Research Ideas 10 Benchmark Topics
Novelty Score5.71
15
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