paper
referenced-only
1970
paper:kuhn-the-structure-of-scientific-revolutions-1970The Structure of Scientific Revolutions
ByThomas S. Kuhn
Related work— refs + corpus + external arXiv
Cited / in-corpus / arXiv badges show which signals surfaced each row. Multi-source rows weighted higher.
- ≈ 66%
- ≈ 65%
- ≈ 65%
- Artificial Intelligence and the Structure of MathematicsMichael R. Douglas, Michael H. Freedman Maissam Barkeshli2026≈ 65%
- ≈ 64%
- General Mechanism of Evolution Shared by Proteins and WordsHsing-Yi Lai, Sun-Ting Tsai, Chen Siang Ng, Kevin Sheng-Kai Ma, Shan-Jyun Wu, Meng-Xue Tsai, Yi-Ching Su, Daw-Wei Wang, and Tzay-Ming Hong Li-Min Wang2026≈ 64%
- Structural Diversity Drives Disruptive Scientific InnovationSaike He, Peijie Zhang, Kang Zhao, Yi Yang, Ning Zhang, Qingpeng Zhang, Daniel Dajun Zeng, Hao Peng Yichun Peng2026≈ 64%
- Mathematical Models of Evolution and Replicator Systems Dynamics. Chapter 1: Introduction to Replicator SystemsS. Drozhzhin, and T. Yakushkina A.S. Bratus2026≈ 64%
- Automated Scientific Discovery: From Equation Discovery to Autonomous Discovery SystemsMattia Cerrato, Jannis Brugger, Sa\v{s}o D\v{z}eroski, Ross King Stefan Kramer2026≈ 64%
- Methods of quantifying specialized knowledge and network rewiringMichael Macy and Victor Nee Sirui Wang2023≈ 63%
- The Non-Optimality of Scientific Knowledge: Path Dependence, Lock-In, and The Local Minimum TrapMohamed Mabrok2026≈ 63%
- The (R)evolution of Scientific Workflows in the Agentic AI Era: Towards Autonomous ScienceRenan Souza, Daniel Rosendo, Fr\'ed\'eric Suter, Feiyi Wang, Prasanna Balaprakash, Rafael Ferreira da Silva Woong Shin2025≈ 63%
- On the Implicit and on the Artificial - Morphogenesis and Emergent Aesthetics in Autonomous Collective SystemsVitorino Ramos2007≈ 63%
- ≈ 63%
- Scaling Laws in Scientific Discovery with AI and Robot ScientistsHeng Zhang, Huazhe Xu, Renjun Xu, Zhenting Wang, Cong Wang, Animesh Garg, Zhibin Li, Arash Ajoudani, Xinyu Liu Pengsong Zhang2025≈ 63%
- ≈ 62%
- ≈ 61%
- Collective intelligence: A unifying concept for integrating biology across scales and substratesin corpus2024≈ 61%
- Information, Processes and Gamesin corpus≈ 60%
- ≈ 60%
- ≈ 60%
- ≈ 60%
- Learning without neurons in physical systemsin corpus2022≈ 60%
- ≈ 59%
- ≈ 59%
- ≈ 59%
- ≈ 59%
- The Machine Consciousness Hypothesisin corpus≈ 58%
- ≈ 58%
- Technical Dimensions of Programming Systemsin corpus2023≈ 58%
Similar preprints — Semantic Scholar
Cited by (2)
- Zoom In: An Introduction to Circuits
The Circuits framework proposes that neural network internals are legible at the level of individual neurons and their weighted connections, advancing three speculative claims: features (directions in
- Technical Dimensions of Programming Systems
Programming systems research has lacked a common analytic vocabulary comparable to what exists for programming languages, leaving systems like Smalltalk, UNIX, HyperCard, and Jupyter evaluable only th