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In praise of secular Bayesianism
Published online by Cambridge University Press: 25 August 2011
Abstract
It is timely to assess Bayesian models, but Bayesianism is not a religion. Bayesian modeling is typically used as a tool to explain human data. Bayesian models are sometimes equivalent to other models, but have the advantage of explicitly integrating prior hypotheses with new observations. Any lack of representational or neural assumptions may be an advantage rather than a disadvantage.
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In praise of secular Bayesianism
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