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Experiments, Simulations, and Epistemic Privilege

Published online by Cambridge University Press:  01 January 2022

Abstract

Experiments are commonly thought to have epistemic privilege over simulations. Two ideas underpin this belief: first, experiments generate greater inferential power than simulations, and second, simulations cannot surprise us the way experiments can. In this article I argue that neither of these claims is true of experiments versus simulations in general. We should give up the common practice of resting in-principle judgments about the epistemic value of cases of scientific inquiry on whether we classify those cases as experiments or simulations, per se. To the extent that either methodology puts researchers in a privileged epistemic position, this is context sensitive.

Type
Research Article
Copyright
Copyright © The Philosophy of Science Association

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Footnotes

I am grateful to Mark Bedau, Mark Colyvan, Karen Detlefsen, Zoltan Domotor, Mary Morgan, Margaret Morrison, Daniel Singer, Kyle Stanford, two anonymous reviewers, and especially Brett Calcott, Paul Sniegowski, and Michael Weisberg for their valuable feedback on drafts of this article. Thanks also to audiences at conferences where I presented earlier versions of this work for helpful comments and discussion: the Australasian Association of Philosophy 2012, Philosophy of Biology at Dolphin Beach 6, Philosophy of Scientific Experimentation 3, the International Society for the History, Philosophy, and Social Studies of Biology 2013, and a University of Pennsylvania Ecolunch Ecology and Evolution seminar. This work was supported by National Science Foundation grant DGE-0822.

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