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arxiv:2505.15047

PiFlow: Principle-aware Scientific Discovery with Multi-Agent Collaboration

Published on May 21
· Submitted by Mellen on May 22
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Abstract

PiFlow, an information-theoretical framework, improves automated scientific discovery by systematically reducing uncertainty and enhancing solution quality across various scientific domains.

AI-generated summary

Large Language Model (LLM)-based multi-agent systems (MAS) demonstrate remarkable potential for scientific discovery. Existing approaches, however, often automate scientific discovery using predefined workflows that lack rationality constraints. This often leads to aimless hypothesizing and a failure to consistently link hypotheses with evidence, thereby hindering systematic uncertainty reduction. Overcoming these limitations fundamentally requires systematic uncertainty reduction. We introduce PiFlow, an information-theoretical framework, treating automated scientific discovery as a structured uncertainty reduction problem guided by principles (e.g., scientific laws). In evaluations across three distinct scientific domains -- discovering nanomaterial structures, bio-molecules, and superconductor candidates with targeted properties -- our method significantly improves discovery efficiency, reflected by a 73.55\% increase in the Area Under the Curve (AUC) of property values versus exploration steps, and enhances solution quality by 94.06\% compared to a vanilla agent system. Overall, PiFlow serves as a Plug-and-Play method, establishing a novel paradigm shift in highly efficient automated scientific discovery, paving the way for more robust and accelerated AI-driven research. Code is publicly available at our https://github.com/amair-lab/PiFlow{GitHub}.

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A novel information-theoretical framework that revolutionizes automated scientific discovery by treating it as systematic uncertainty reduction guided by scientific principles. Demonstrated across nanomaterials, bio-molecules, and superconductors with 73.55% efficiency gains and 94.06% quality improvements over baseline methods.

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