Article ID Journal Published Year Pages File Type
10524891 Journal of Statistical Planning and Inference 2012 15 Pages PDF
Abstract
This paper formulates a theory of probabilistic parametric inference and explores the limits of its applicability. Unlike Bayesian statistical models, the system does not comprise prior probability distributions. Objectivity is imposed on the theory: a particular direct probability density should always result in the same posterior probability distribution. For calibrated posterior probability distributions it is possible to construct credible regions with posterior-probability content equal to the coverage of the regions, but the calibration is not generally preserved under marginalization. As an application of the theory, the paper also constructs a filter for linear Gauss-Markov stochastic processes with unspecified initial conditions.
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Physical Sciences and Engineering Mathematics Applied Mathematics
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