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Large Deviations Theory and Empirical Estimator Choice

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Author Info
Marian Grendar (Institute of Measurement Sciences SAS, Bratislava, Slovakia)
George Judge (University of California, Berkeley and Giannini Foundation)

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Abstract

Criterion choice is such a hard problem in information recovery and in estimation and inference. In the case of inverse problems with noise, can probabilistic laws provide a basis for empirical estimator choice? That is the problem we investigate in this paper. Large Deviations Theory is used to evaluate the choice of estimator in the case of two fundamental situations-problems in modelling data. The probabilistic laws developed demonstrate that each problem has a unique solution-empirical estimator. Whether other members of the empirical estimator family can be associated a particular problem and conditional limit theorem, is an open question.

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File URL: http://repositories.cdlib.org/cgi/viewcontent.cgi?article=1104&context=are_ucb
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Publisher Info
Paper provided by Department of Agricultural & Resource Economics, UC Berkeley in its series Department of Agricultural & Resource Economics, UC Berkeley, Working Paper Series with number 1012.

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Date of creation: 01 Jan 2006
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Handle: RePEc:cdl:agrebk:1012

Note: oai:cdlib1:are_ucb-1104
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Related research
Keywords: entropy information theory large deviations empirical likelihood Boltzmann Jaynes Inverse Problem probabilistic laws

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