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How Collective Predictive Coding Hints at the F...

Shiro Takagi
October 26, 2024
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How Collective Predictive Coding Hints at the Future of Science with AI

Shiro Takagi

October 26, 2024
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  1. Taniguchi et al., (2024) Collective Predictive Coding as Model of

    Science: Formalizing Scientific Activities Towards Generative Science CPC-MS Interpretates science as a symbol emergence system that performs collective predictive coding 2
  2. 1. AI Scientist in Future Science 2. Towards Automated Science

    System What perspective will CPC-MS offer us for shaping the future of science? 3
  3. Lu et al. (2024) The AI Scientist: Towards Fully Automated

    Open-Ended Scientific Discovery https://sakana.ai/ai-scientist/ 5
  4. Lu et al. (2024) The AI Scientist: Towards Fully Automated

    Open-Ended Scientific Discovery An AI Scientist that conducts every step from idea generation, experimentation, paper-writeup to peer review 6
  5. 7 Lu et al. (2024) The AI Scientist: Towards Fully

    Automated Open-Ended Scientific Discovery
  6. Lu et al. (2024) The AI Scientist: Towards Fully Automated

    Open-Ended Scientific Discovery This is just the beggining of the age of AI Scientist! 8
  7. Taniguchi et al., (2024) Collective Predictive Coding as Model of

    Science: Formalizing Scientific Activities Towards Generative Science 12 This is the graphical model of CPC-MS Unique parameter for each agent
  8. Human & AI scientists would likely have different biases Taniguchi

    et al., (2024) Collective Predictive Coding as Model of Science: Formalizing Scientific Activities Towards Generative Science 13
  9. Thus, different internal representation & observation Taniguchi et al., (2024)

    Collective Predictive Coding as Model of Science: Formalizing Scientific Activities Towards Generative Science 14
  10. This would lead to diverse global representation sampling -> good

    for social objectivity (explained by the last speaker) w w w Taniguchi et al., (2024) Collective Predictive Coding as Model of Science: Formalizing Scientific Activities Towards Generative Science 15
  11. Concerns about the lack of shared common ground <- prerequisite

    for social objectivity Taniguchi et al., (2024) Collective Predictive Coding as Model of Science: Formalizing Scientific Activities Towards Generative Science 16
  12. Global scientific rerpresentations (Shared explicit knowledge) Proposition from AI/human is

    highly likely to be rejected by human/AI because their internal representation would look different Human Scientist AI Scientist AI/human would likely reject human/AI’s proposal -> from distribution update perspective, this means poor convergence efficiency 17
  13. The entry of AI Scientists into the scientific community brings

    diversity Promotes “objective” scientific inquiry Enables more extensive sampling Loss of common ground among scientists Worsened distribution convergence While the diversity introduced by AI Scientists enhances objectivity, it also creates a trade-off by raising communication challenges between human and AI scientists (the human & AI scientists alignment probelm) → It is crucial to discuss the design of science that incorporates AI scientists 18
  14. 1900s Robot AI Dendral BACON Adam AlphaFold AI Scientist MLAgent

    ChemCrow Coscientist MOOSE prompt2model ... Automated Theorem Proving SciML Physics Informed ML 2000s 2012 Laboratory Automation Scientific Workflow Program Synthesis Scholarly Document Processing Automated Experimental Design Literature Based Discovery Symbolic Regression ... Computer ML DNN Nobel Turing Challenge AI for Science 4thScience Curious Agent AI Feynman Geometric DL Galactica Bayes for Science Neural Operator ReviewRobot PaperRobot MLR-Copilot AlphaGeometry data2paper ... WINGS ... ... ChatGPT 2022 Scientific Claim Verifi. Mahoro Solevent SemNet ... DISK 3rdScience [Wang+ 2023] 2017 Transformer AutoML MLOps AM Logic Theorist Automatic Statistician Eve 20 Long history of research automation
  15. Langley et al. (1987) Scientific Discovery: Computational Explorations of the

    Creative Process Schmidhuber (1991) Curious Model-Building Control Systems 21
  16. Kitano (2021) Nobel Turing Challenge: creating the engine for scientific

    discovery King et al. (2009) The Automation of Science Waltz and Buchanan (2009) Automating Science 22
  17. Lu et al. (2024) The AI Scientist: Towards Fully Automated

    Open-Ended Scientific Discovery https://sakana.ai/ai-scientist/ 23
  18. AI Scientist Studies related to research automation have mainly focused

    on automating a researcher’s process or aimed to realize AI “scientist”, but science is collaborative social process and not confined into single agent... 24 AI Scientist AI Scientist AI Scientist AI Scientist
  19. AI Scientist Global scientific rerpresentations (Shared explicit knowledge) AI Scientist

    AI Scientist CPC-MS is a mathematical/probabilistic model of the entire scientific community and provides a starting point for the automation of the entire scientific community beyond realizing an AI scientist 25
  20. Conclusion CPC-MS enables discussions on the potential impact of AI

    scientists on science from a probabilistic perspective It also lays the foundation for designing and implementing new forms of science, such as future automated science 26