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AI-Driven Automation Can Become the Foundation of Next-Era Science of Science Research

17 May 2025
Renqi Chen
Haoyang Su
Shixiang Tang
Zhenfei Yin
Qi Wu
Hui Li
Ye Sun
Nanqing Dong
Wanli Ouyang
Philip Torr
    AI4CE
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Abstract

The Science of Science (SoS) explores the mechanisms underlying scientific discovery, and offers valuable insights for enhancing scientific efficiency and fostering innovation. Traditional approaches often rely on simplistic assumptions and basic statistical tools, such as linear regression and rule-based simulations, which struggle to capture the complexity and scale of modern research ecosystems. The advent of artificial intelligence (AI) presents a transformative opportunity for the next generation of SoS, enabling the automation of large-scale pattern discovery and uncovering insights previously unattainable. This paper offers a forward-looking perspective on the integration of Science of Science with AI for automated research pattern discovery and highlights key open challenges that could greatly benefit from AI. We outline the advantages of AI over traditional methods, discuss potential limitations, and propose pathways to overcome them. Additionally, we present a preliminary multi-agent system as an illustrative example to simulate research societies, showcasing AI's ability to replicate real-world research patterns and accelerate progress in Science of Science research.

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@article{chen2025_2505.12039,
  title={ AI-Driven Automation Can Become the Foundation of Next-Era Science of Science Research },
  author={ Renqi Chen and Haoyang Su and Shixiang Tang and Zhenfei Yin and Qi Wu and Hui Li and Ye Sun and Nanqing Dong and Wanli Ouyang and Philip Torr },
  journal={arXiv preprint arXiv:2505.12039},
  year={ 2025 }
}
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