Skip to main content
eScholarship
Open Access Publications from the University of California

UC Berkeley Library

Berkeley Research Impact Initiative (BRII) bannerUC Berkeley

Implications of the Cressie-Read Family of Additive Divergences for Information Recovery

Published Web Location

http://www.mdpi.com/1099-4300/14/12/2427
No data is associated with this publication.
Abstract

To address the unknown nature of probability-sampling models, in this paper we use information theoretic concepts and the Cressie-Read (CR) family of information divergence measures to produce a flexible family of probability distributions, likelihood functions, estimators, and inference procedures. The usual case in statistical modeling is that the noisy indirect data are observed and known and the sampling model-error distribution-probability space, consistent with the data, is unknown. To address the unknown sampling process underlying the data, we consider a convex combination of two or more estimators derived from members of the flexible CR family of divergence measures and optimize that combination to select an estimator that minimizes expected quadratic loss. Sampling experiments are used to illustrate the finite sample properties of the resulting estimator and the nature of the recovered sampling distribution.

Item not freely available? Link broken?
Report a problem accessing this item