
Contemporary societies are often "polarized", in the sense that sub-groups within these societies hold stably opposing beliefs, even when there is a fact of the matter. Extant models of polarization do not capture the idea that some beliefs are true and others false. Here we present a model, based on the network epistemology framework of Bala and Goyal ["Learning from neighbors", \textit{Rev. Econ. Stud.} \textbf{65}(3), 784-811 (1998)], in which polarization emerges even though agents gather evidence about their beliefs, and true belief yields a pay-off advantage. The key mechanism that generates polarization involves treating evidence generated by other agents as uncertain when their beliefs are relatively different from one's own.
22 pages, 5 figures, author final version
Social epistemology, Social and Information Networks (cs.SI), FOS: Computer and information sciences, Physics - Physics and Society, Theory change, FOS: Physical sciences, Network, trust, Computer Science - Social and Information Networks, Physics and Society (physics.soc-ph), Philosophy, epistemic networks, History and Philosophy of Specific Fields, Network epistemology, Polarization, Agent based modeling, scientific disagreement, Cognitive Sciences
Social epistemology, Social and Information Networks (cs.SI), FOS: Computer and information sciences, Physics - Physics and Society, Theory change, FOS: Physical sciences, Network, trust, Computer Science - Social and Information Networks, Physics and Society (physics.soc-ph), Philosophy, epistemic networks, History and Philosophy of Specific Fields, Network epistemology, Polarization, Agent based modeling, scientific disagreement, Cognitive Sciences
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