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Theory Choice in Epistemic Networks: Five ways to avoid premature convergence

Jonard, Nicolas and Reijula, Samuli and Marengo, Luigi (2025) Theory Choice in Epistemic Networks: Five ways to avoid premature convergence. [Preprint]

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Abstract

In this article, we study difficult theory-choice situations, where division of cognitive labor is needed. Network epistemology models suggest that reducing connectivity is needed to prevent premature convergence on bad theories. We compare how network density, community size, strength of prior beliefs, adaptive learning methods, and weak ties influence epistemic outcomes, and show that reducing connectivity is only one possible way to improve collective epistemic accuracy. Our findings suggest that gains in accuracy often come at a high cost in resources used, which should be considered when results from network epistemology models are used in applied settings.


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Item Type: Preprint
Creators:
CreatorsEmailORCID
Jonard, Nicolasnicolas.jonard@uni.lu
Reijula, Samulisamuli.reijula@helsinki.fi
Marengo, Luigilmarengo@luiss.it
Keywords: theory choice; transient diversity; computational philosophy; weak ties
Subjects: General Issues > Computer Simulation
General Issues > Models and Idealization
General Issues > Social Epistemology of Science
Depositing User: Dr Samuli Reijula
Date Deposited: 02 Sep 2025 11:07
Last Modified: 02 Sep 2025 11:07
Item ID: 26427
Subjects: General Issues > Computer Simulation
General Issues > Models and Idealization
General Issues > Social Epistemology of Science
Date: 15 April 2025
URI: https://philsci-archive.pitt.edu/id/eprint/26427

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