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arXiv 提交日期: 2026-05-28
📄 Abstract - MOOSE-Copilot: A Web-Based Interactive Assistant for Unified Exploratory and Fine-Grained Scientific Hypothesis Discovery

Large language models (LLMs) show remarkable potential in scientific hypothesis discovery. However, existing approaches face two critical limitations: they treat divergent exploratory ideation and convergent fine-grained refinement as isolated tasks, and they operate autonomously with little to no human guidance. We present MOOSE-Copilot, the first unified framework to bridge this abstraction gap through a formalized human-AI interaction (HAII) protocol. Our system empowers scientists to steer the generative process via three explicit signals: initial blueprints, inter-stage routing, and regenerative feedback. Quantitative evaluations demonstrate that injecting these structured expert signals significantly outperforms purely autonomous baselines, establishing a performance ceiling under oracle guidance. Furthermore, to democratize this paradigm, we develop an intuitive web-based interface featuring interactive tree visualization. This explicitly eliminates the steep learning curve of complex command-line agentic tools, empowering interdisciplinary researchers to directly leverage, visually orchestrate, and accelerate end-to-end scientific breakthroughs.

顶级标签: llm agents general
详细标签: scientific hypothesis discovery human-ai interaction tree visualization web-based interface 或 搜索:

MOOSE-Copilot:面向统一探索性与细粒度科学假说发现的网页交互助手 / MOOSE-Copilot: A Web-Based Interactive Assistant for Unified Exploratory and Fine-Grained Scientific Hypothesis Discovery


1️⃣ 一句话总结

本文提出了一个名为MOOSE-Copilot的在线交互工具,它通过让研究人员在科学假说生成过程中提供初步蓝图、阶段性方向调整和反复反馈,将广泛探索与精细修正融为一体,显著提升了假说发现的质量,并通过直观的网页界面降低了使用门槛,使跨学科研究者也能轻松参与。

源自 arXiv: 2605.29475