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A Unified Framework for Bayesian and Non-Bayesian Decision Making and Inference

Author

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  • Massimiliano Amarante

    (Université de Montréal and CIREQ, Montréal, Quebec H3C 3J7, Canada)

Abstract

After showing, by means of a series of examples, that paradigms alternative to the Bayesian one obtain by simply replacing the notion of approximation associated with the latter, the paper presents a unified framework for theories of decision making and inference. Given a statistical model, the algebra of bounded random variables on the sample space is mapped homomorphically into an algebra of operators on a certain Hilbert space. Then, the choice of a norm or a divergence function on the latter algebra produces a theory of decision making and inference. Examples include models from the Choquet expected utility class, models from robust statistics, the smooth model, maxmin and maxmax (as limiting cases) as well as a novel theory. The paper also contributes to Bayesian theory, which obtains in correspondence to a Hilbert norm. It shows that Bayes’ theorem can be derived from the fundamental concept of conditional expectation and that it is the only updating rule for which the operations of updating and of calculating the predictive commute.

Suggested Citation

  • Massimiliano Amarante, 2022. "A Unified Framework for Bayesian and Non-Bayesian Decision Making and Inference," Mathematics of Operations Research, INFORMS, vol. 47(4), pages 2721-2742, November.
  • Handle: RePEc:inm:ormoor:v:47:y:2022:i:4:p:2721-2742
    DOI: 10.1287/moor.2021.1226
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