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THEORY FROM CHAOS

Published online by Cambridge University Press:  13 November 2013

Abstract

I explore an agent-based model of the development and dissemination of scientific theory that makes very little use of any pre-defined “social structure” (such as partnerships or collaborations). In these models, under a broad range of values of the parameters, widespread (but not universal) “agreement” about scientific theory emerges. Moreover, the residual disagreement turns out to be important to developing new theories in the face of new evidence.

Type
Discussion
Copyright
Copyright © Cambridge University Press 2013 

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