Idea2Story: An Automated Pipeline for Transforming Research Concepts into Complete Scientific Narratives
Tengyue Xu, Zhuoyang Qian, Gaoge Liu, Li Ling, Zhentao Zhang, Biao Wu, Shuo Zhang, Ke Lu, Wei Shi, Ziqi Wang, Zheng Feng, Yan Luo, Shu Xu, Yongjin Chen, Zhibo Feng, Zhuo Chen, Bruce Yuan, Harry Wang, Kris Chen

TL;DR
Idea2Story introduces a pre-computation framework that builds a structured knowledge graph from scientific literature, enabling efficient, reliable autonomous research planning and reducing computational costs compared to online reasoning methods.
Contribution
It shifts scientific discovery from online reasoning to offline knowledge construction, creating a reusable research pattern graph for autonomous discovery.
Findings
Generates coherent and methodologically grounded research patterns.
Reduces runtime computational costs and hallucinations.
Produces high-quality research demonstrations.
Abstract
Autonomous scientific discovery with large language model (LLM)-based agents has recently made substantial progress, demonstrating the ability to automate end-to-end research workflows. However, existing systems largely rely on runtime-centric execution paradigms, repeatedly reading, summarizing, and reasoning over large volumes of scientific literature online. This on-the-spot computation strategy incurs high computational cost, suffers from context window limitations, and often leads to brittle reasoning and hallucination. We propose Idea2Story, a pre-computation-driven framework for autonomous scientific discovery that shifts literature understanding from online reasoning to offline knowledge construction. Idea2Story continuously collects peer-reviewed papers together with their review feedback, extracts core methodological units, composes reusable research patterns, and organizes…
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Taxonomy
TopicsTopic Modeling · Advanced Graph Neural Networks · Machine Learning in Materials Science
