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Main Authors: Taniguchi, Tadahiro, Takagi, Shiro, Otsuka, Jun, Hayashi, Yusuke, Hamada, Hiro Taiyo
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.00102
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author Taniguchi, Tadahiro
Takagi, Shiro
Otsuka, Jun
Hayashi, Yusuke
Hamada, Hiro Taiyo
author_facet Taniguchi, Tadahiro
Takagi, Shiro
Otsuka, Jun
Hayashi, Yusuke
Hamada, Hiro Taiyo
contents This paper proposes a new conceptual framework called Collective Predictive Coding as a Model of Science (CPC-MS) to formalize and understand scientific activities. Building on the idea of collective predictive coding originally developed to explain symbol emergence, CPC-MS models science as a decentralized Bayesian inference process carried out by a community of agents. The framework describes how individual scientists' partial observations and internal representations are integrated through communication and peer review to produce shared external scientific knowledge. Key aspects of scientific practice like experimentation, hypothesis formation, theory development, and paradigm shifts are mapped onto components of the probabilistic graphical model. This paper discusses how CPC-MS provides insights into issues like social objectivity in science, scientific progress, and the potential impacts of AI on research. The generative view of science offers a unified way to analyze scientific activities and could inform efforts to automate aspects of the scientific process. Overall, CPC-MS aims to provide an intuitive yet formal model of science as a collective cognitive activity.
format Preprint
id arxiv_https___arxiv_org_abs_2409_00102
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Collective Predictive Coding as Model of Science: Formalizing Scientific Activities Towards Generative Science
Taniguchi, Tadahiro
Takagi, Shiro
Otsuka, Jun
Hayashi, Yusuke
Hamada, Hiro Taiyo
Physics and Society
This paper proposes a new conceptual framework called Collective Predictive Coding as a Model of Science (CPC-MS) to formalize and understand scientific activities. Building on the idea of collective predictive coding originally developed to explain symbol emergence, CPC-MS models science as a decentralized Bayesian inference process carried out by a community of agents. The framework describes how individual scientists' partial observations and internal representations are integrated through communication and peer review to produce shared external scientific knowledge. Key aspects of scientific practice like experimentation, hypothesis formation, theory development, and paradigm shifts are mapped onto components of the probabilistic graphical model. This paper discusses how CPC-MS provides insights into issues like social objectivity in science, scientific progress, and the potential impacts of AI on research. The generative view of science offers a unified way to analyze scientific activities and could inform efforts to automate aspects of the scientific process. Overall, CPC-MS aims to provide an intuitive yet formal model of science as a collective cognitive activity.
title Collective Predictive Coding as Model of Science: Formalizing Scientific Activities Towards Generative Science
topic Physics and Society
url https://arxiv.org/abs/2409.00102