RoadMapper

A Multi-Agent System for Roadmap Generation of Solving Complex Research Problems

Jiacheng Liu1 Zichen Tang1 Zhongjun Yang1 Xinyi Hu1 Xueyuan Lin2,3,4 Linwei Jia1 Ruofei Bai1 Rongjin Li1 Shiyao Peng1 Haocheng Gao1 Haihong E1*

1Beijing University of Posts and Telecommunications

2The Hong Kong University of Science and Technology (Guangzhou)

3IDEA Research   4Hithink RoyalFlush Information Network Co., Ltd.

* Corresponding author

Abstract

People commonly leverage structured content to accelerate knowledge acquisition and research problem solving. Among these, roadmaps guide researchers through hierarchical subtasks to solve complex research problems step by step. Despite progress in structured content generation, the roadmap generation task has remained unexplored. To bridge this gap, we introduce RoadMap, a novel benchmark designed to evaluate the ability of large language models (LLMs) to construct high-quality roadmaps for solving complex research problems. Based on this, we identify three limitations of LLMs: (1) lack of professional knowledge, (2) unreasonable task decomposition, and (3) disordered logical relationships. To address these challenges, we propose RoadMapper, an LLM-based multi-agent system that decomposes the research roadmap generation task into three key stages (i.e., initial generation, knowledge augmentation, and iterative "critique-revise-evaluate"). Extensive experiments demonstrate that RoadMapper can improve LLMs' ability for roadmap generation, while enhancing average performance by more than 8% and saving 84% of the time required by human experts, highlighting its effectiveness and application potential.

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