USING EXACT POISSON LIKELIHOOD FUNCTIONS IN BAYESIAN INTERPRETATION OF COUNTING MEASUREMENTS

Guthrie Miller,  Harry F. Martz, Tom T. Little, and Ray Guilmette

Los Alamos National Laboratory
Los Alamos, NM 87545

ABSTRACT

A technique for computing the exact marginalized (integrated) Poisson likelihood function for counting measurement processes involving a background subtraction is described. An empirical Bayesian method for determining the prior probability distribution of background count rates from population data is recommended and would seem to have important practical advantages. The exact marginalized Poisson likelihood function may be used instead of the commonly used Gaussian approximation. Differences occur in some cases of small numbers of measured counts, which are discussed. Optional use of exact likelihood functions in our Bayesian internal dosimetry codes has been implemented using an interpolation-table approach, which means that there is no computation time penalty except for the initial setup of the interpolation tables.

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keywords: Bayesian analysis, likelihood function, Poisson distribution, internal dosimetry algorithms