Justifying Objective Bayesianism on Predicate Languages

Entropy 17 (4):2459-2543 (2015)
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Abstract

Objective Bayesianism says that the strengths of one’s beliefs ought to be probabilities, calibrated to physical probabilities insofar as one has evidence of them, and otherwise sufficiently equivocal. These norms of belief are often explicated using the maximum entropy principle. In this paper we investigate the extent to which one can provide a unified justification of the objective Bayesian norms in the case in which the background language is a first-order predicate language, with a view to applying the resulting formalism to inductive logic. We show that the maximum entropy principle can be motivated largely in terms of minimising worst-case expected loss.

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Author Profiles

Jürgen Landes
Università degli Studi di Milano
Jon Williamson
University of Kent

References found in this work

Elicitation of Personal Probabilities and Expectations.Leonard Savage - 1971 - Journal of the American Statistical Association 66 (336):783-801.
Maximum Entropy Inference with Quantified Knowledge.Owen Barnett & Jeff Paris - 2008 - Logic Journal of the IGPL 16 (1):85-98.

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