ArXiv TLDR

Enhancing Research Idea Generation through Combinatorial Innovation and Multi-Agent Iterative Search Strategies

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2604.20548

Shuai Chen, Chengzhi Zhang

cs.CLcs.AIcs.DLcs.IR

TLDR

This paper introduces a multi-agent iterative search strategy using LLMs to generate diverse and novel research ideas, outperforming existing methods.

Key contributions

  • Proposes a multi-agent iterative planning search strategy for research idea generation.
  • Combines iterative knowledge search with an LLM-based multi-agent system for idea refinement.
  • Achieves higher diversity and novelty in generated research ideas compared to SOTA baselines.
  • Generated ideas' quality is comparable to those in top-tier ML conference papers.

Why it matters

Generating novel research ideas is crucial but challenging with vast literature. This work addresses the limitations of current LLM-based methods by introducing a multi-agent system that iteratively refines ideas. It significantly improves idea diversity and novelty, offering a promising tool for researchers.

Original Abstract

Scientific progress depends on the continual generation of innovative re-search ideas. However, the rapid growth of scientific literature has greatly increased the cost of knowledge filtering, making it harder for researchers to identify novel directions. Although existing large language model (LLM)-based methods show promise in research idea generation, the ideas they produce are often repetitive and lack depth. To address this issue, this study proposes a multi-agent iterative planning search strategy inspired by com-binatorial innovation theory. The framework combines iterative knowledge search with an LLM-based multi-agent system to generate, evaluate, and re-fine research ideas through repeated interaction, with the goal of improving idea diversity and novelty. Experiments in the natural language processing domain show that the proposed method outperforms state-of-the-art base-lines in both diversity and novelty. Further comparison with ideas derived from top-tier machine learning conference papers indicates that the quality of the generated ideas falls between that of accepted and rejected papers. These results suggest that the proposed framework is a promising approach for supporting high-quality research idea generation. The source code and dataset used in this paper are publicly available on Github repository: https://github.com/ChenShuai00/MAGenIdeas. The demo is available at https://huggingface.co/spaces/cshuai20/MAGenIdeas.

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